Jandrlić, Davorka

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  • Jandrlić, Davorka (31)

Author's Bibliography

Error bound of Gaussian quadrature rules for certain Gegenbauer weight functions

Jandrlić, Davorka; Pejčev, Aleksandar; Spalević, Miodrag

(Elsevier, 2024)

TY  - JOUR
AU  - Jandrlić, Davorka
AU  - Pejčev, Aleksandar
AU  - Spalević, Miodrag
PY  - 2024
UR  - https://machinery.mas.bg.ac.rs/handle/123456789/7069
AB  - In this paper we present an extension of our previous research, focusing on a method to numerically evaluate the error term in the Gaussian quadrature formula with the Legendre weight function, as discussed by Jandrlic et al. (2022). For an analytic integrand, the error term in Gaussian quadrature can be expressed as a contour integral. Consequently, determining the upper bound of the error term involves identifying the maximum value of the modulus of the kernel within the subintegral expression for the error along this contour. In our previous study, we investigated the position of this maximum point on the ellipse for Legendre polynomials. In this paper, we establish sufficient conditions for the maximum of the modulus of the kernel, which we derived analytically, to occur at one of the semi-axes for Gegenbauer polynomials. This result extends to a significantly broader case. We present an effective error estimation that we compare with the actual one. Some numerical results are presented.
PB  - Elsevier
T2  - Journal of Computational and Applied Mathematics
T1  - Error bound of Gaussian quadrature rules for certain Gegenbauer weight functions
IS  - Art.  115586
VL  - 440
DO  - 10.1016/j.cam.2023.115661
ER  - 
@article{
author = "Jandrlić, Davorka and Pejčev, Aleksandar and Spalević, Miodrag",
year = "2024",
abstract = "In this paper we present an extension of our previous research, focusing on a method to numerically evaluate the error term in the Gaussian quadrature formula with the Legendre weight function, as discussed by Jandrlic et al. (2022). For an analytic integrand, the error term in Gaussian quadrature can be expressed as a contour integral. Consequently, determining the upper bound of the error term involves identifying the maximum value of the modulus of the kernel within the subintegral expression for the error along this contour. In our previous study, we investigated the position of this maximum point on the ellipse for Legendre polynomials. In this paper, we establish sufficient conditions for the maximum of the modulus of the kernel, which we derived analytically, to occur at one of the semi-axes for Gegenbauer polynomials. This result extends to a significantly broader case. We present an effective error estimation that we compare with the actual one. Some numerical results are presented.",
publisher = "Elsevier",
journal = "Journal of Computational and Applied Mathematics",
title = "Error bound of Gaussian quadrature rules for certain Gegenbauer weight functions",
number = "Art.  115586",
volume = "440",
doi = "10.1016/j.cam.2023.115661"
}
Jandrlić, D., Pejčev, A.,& Spalević, M.. (2024). Error bound of Gaussian quadrature rules for certain Gegenbauer weight functions. in Journal of Computational and Applied Mathematics
Elsevier., 440(Art.  115586).
https://doi.org/10.1016/j.cam.2023.115661
Jandrlić D, Pejčev A, Spalević M. Error bound of Gaussian quadrature rules for certain Gegenbauer weight functions. in Journal of Computational and Applied Mathematics. 2024;440(Art.  115586).
doi:10.1016/j.cam.2023.115661 .
Jandrlić, Davorka, Pejčev, Aleksandar, Spalević, Miodrag, "Error bound of Gaussian quadrature rules for certain Gegenbauer weight functions" in Journal of Computational and Applied Mathematics, 440, no. Art.  115586 (2024),
https://doi.org/10.1016/j.cam.2023.115661 . .

Mathematical models for evaluation of student’s performance

Vučić, Miloš; Jandrlić, Davorka

(2023)

TY  - CONF
AU  - Vučić, Miloš
AU  - Jandrlić, Davorka
PY  - 2023
UR  - https://machinery.mas.bg.ac.rs/handle/123456789/7303
AB  - Developing mathematical models for assessing students' performance is a multifaceted endeavor that encompasses various educational objectives, including grading, performance prediction, proficiency identification, and more. Here, we were focused on establishing correlations among subjects that students typically pass together and other parameters that influence individual student success in those subjects.
C3  - ICMRS 2023, Book of abstracts
T1  - Mathematical models for evaluation of student’s performance
UR  - https://hdl.handle.net/21.15107/rcub_machinery_7303
ER  - 
@conference{
author = "Vučić, Miloš and Jandrlić, Davorka",
year = "2023",
abstract = "Developing mathematical models for assessing students' performance is a multifaceted endeavor that encompasses various educational objectives, including grading, performance prediction, proficiency identification, and more. Here, we were focused on establishing correlations among subjects that students typically pass together and other parameters that influence individual student success in those subjects.",
journal = "ICMRS 2023, Book of abstracts",
title = "Mathematical models for evaluation of student’s performance",
url = "https://hdl.handle.net/21.15107/rcub_machinery_7303"
}
Vučić, M.,& Jandrlić, D.. (2023). Mathematical models for evaluation of student’s performance. in ICMRS 2023, Book of abstracts.
https://hdl.handle.net/21.15107/rcub_machinery_7303
Vučić M, Jandrlić D. Mathematical models for evaluation of student’s performance. in ICMRS 2023, Book of abstracts. 2023;.
https://hdl.handle.net/21.15107/rcub_machinery_7303 .
Vučić, Miloš, Jandrlić, Davorka, "Mathematical models for evaluation of student’s performance" in ICMRS 2023, Book of abstracts (2023),
https://hdl.handle.net/21.15107/rcub_machinery_7303 .

Error estimates for Gaussian quadrature formulae of analytic functions for various weight functions

Jandrlić, Davorka; Pejčev, Aleksandar; Miodrag, Spalević

(2023)

TY  - CONF
AU  - Jandrlić, Davorka
AU  - Pejčev, Aleksandar
AU  - Miodrag, Spalević
PY  - 2023
UR  - https://icoles.net/
UR  - https://machinery.mas.bg.ac.rs/handle/123456789/7340
AB  - We studied the error bound of Gaussian quadrature for analytic functions. The basic idea is to express the remainder of Gaussian quadrature as a contour integral, then the error bound is reduced to find the maximum of the kernel function.
C3  - ICOLES 2023
T1  - Error estimates for Gaussian quadrature formulae of analytic functions for various weight functions
UR  - https://hdl.handle.net/21.15107/rcub_machinery_7340
ER  - 
@conference{
author = "Jandrlić, Davorka and Pejčev, Aleksandar and Miodrag, Spalević",
year = "2023",
abstract = "We studied the error bound of Gaussian quadrature for analytic functions. The basic idea is to express the remainder of Gaussian quadrature as a contour integral, then the error bound is reduced to find the maximum of the kernel function.",
journal = "ICOLES 2023",
title = "Error estimates for Gaussian quadrature formulae of analytic functions for various weight functions",
url = "https://hdl.handle.net/21.15107/rcub_machinery_7340"
}
Jandrlić, D., Pejčev, A.,& Miodrag, S.. (2023). Error estimates for Gaussian quadrature formulae of analytic functions for various weight functions. in ICOLES 2023.
https://hdl.handle.net/21.15107/rcub_machinery_7340
Jandrlić D, Pejčev A, Miodrag S. Error estimates for Gaussian quadrature formulae of analytic functions for various weight functions. in ICOLES 2023. 2023;.
https://hdl.handle.net/21.15107/rcub_machinery_7340 .
Jandrlić, Davorka, Pejčev, Aleksandar, Miodrag, Spalević, "Error estimates for Gaussian quadrature formulae of analytic functions for various weight functions" in ICOLES 2023 (2023),
https://hdl.handle.net/21.15107/rcub_machinery_7340 .

Error estimates for Gaussian quadrature formulae of analytic functions

Jandrlić, Davorka; Pejčev, Aleksandar; Miodrag, Spalević

(2023)

TY  - CONF
AU  - Jandrlić, Davorka
AU  - Pejčev, Aleksandar
AU  - Miodrag, Spalević
PY  - 2023
UR  - http://www.ic-mrs.org/
UR  - https://machinery.mas.bg.ac.rs/handle/123456789/7314
C3  - ICMRS 2023
T1  - Error estimates for Gaussian quadrature formulae of analytic functions
UR  - https://hdl.handle.net/21.15107/rcub_machinery_7314
ER  - 
@conference{
author = "Jandrlić, Davorka and Pejčev, Aleksandar and Miodrag, Spalević",
year = "2023",
journal = "ICMRS 2023",
title = "Error estimates for Gaussian quadrature formulae of analytic functions",
url = "https://hdl.handle.net/21.15107/rcub_machinery_7314"
}
Jandrlić, D., Pejčev, A.,& Miodrag, S.. (2023). Error estimates for Gaussian quadrature formulae of analytic functions. in ICMRS 2023.
https://hdl.handle.net/21.15107/rcub_machinery_7314
Jandrlić D, Pejčev A, Miodrag S. Error estimates for Gaussian quadrature formulae of analytic functions. in ICMRS 2023. 2023;.
https://hdl.handle.net/21.15107/rcub_machinery_7314 .
Jandrlić, Davorka, Pejčev, Aleksandar, Miodrag, Spalević, "Error estimates for Gaussian quadrature formulae of analytic functions" in ICMRS 2023 (2023),
https://hdl.handle.net/21.15107/rcub_machinery_7314 .

Error estimates for Gaussian quadrature formulae

Jandrlić, Davorka; Pejčev, Aleksandar; Spalević, Miodrag

(Prirodno-matematički fakultet Kragujevac, 2023)

TY  - CONF
AU  - Jandrlić, Davorka
AU  - Pejčev, Aleksandar
AU  - Spalević, Miodrag
PY  - 2023
UR  - https://machinery.mas.bg.ac.rs/handle/123456789/7215
PB  - Prirodno-matematički fakultet Kragujevac
C3  - International Mathematical Conference Analysis, Approximations and Applications (AAA2023), Vrnjačka Banja
T1  - Error estimates for Gaussian quadrature formulae
UR  - https://hdl.handle.net/21.15107/rcub_machinery_7215
ER  - 
@conference{
author = "Jandrlić, Davorka and Pejčev, Aleksandar and Spalević, Miodrag",
year = "2023",
publisher = "Prirodno-matematički fakultet Kragujevac",
journal = "International Mathematical Conference Analysis, Approximations and Applications (AAA2023), Vrnjačka Banja",
title = "Error estimates for Gaussian quadrature formulae",
url = "https://hdl.handle.net/21.15107/rcub_machinery_7215"
}
Jandrlić, D., Pejčev, A.,& Spalević, M.. (2023). Error estimates for Gaussian quadrature formulae. in International Mathematical Conference Analysis, Approximations and Applications (AAA2023), Vrnjačka Banja
Prirodno-matematički fakultet Kragujevac..
https://hdl.handle.net/21.15107/rcub_machinery_7215
Jandrlić D, Pejčev A, Spalević M. Error estimates for Gaussian quadrature formulae. in International Mathematical Conference Analysis, Approximations and Applications (AAA2023), Vrnjačka Banja. 2023;.
https://hdl.handle.net/21.15107/rcub_machinery_7215 .
Jandrlić, Davorka, Pejčev, Aleksandar, Spalević, Miodrag, "Error estimates for Gaussian quadrature formulae" in International Mathematical Conference Analysis, Approximations and Applications (AAA2023), Vrnjačka Banja (2023),
https://hdl.handle.net/21.15107/rcub_machinery_7215 .

Error Estimates for Gaussian Quadrature of Analytic Functions

Jandrlić, Davorka; Pejčev, Aleksandar; Spalević, Miodrag

(2023)

TY  - CONF
AU  - Jandrlić, Davorka
AU  - Pejčev, Aleksandar
AU  - Spalević, Miodrag
PY  - 2023
UR  - http://www.ic-mrs.org/
UR  - https://machinery.mas.bg.ac.rs/handle/123456789/7663
C3  - 6TH INTERNATIONAL CONFERENCE ON MATHEMATICAL AND RELATED SCIENCES  BOOK OF ABSTRACTS
T1  - Error Estimates for Gaussian Quadrature of Analytic Functions
UR  - https://hdl.handle.net/21.15107/rcub_machinery_7663
ER  - 
@conference{
author = "Jandrlić, Davorka and Pejčev, Aleksandar and Spalević, Miodrag",
year = "2023",
journal = "6TH INTERNATIONAL CONFERENCE ON MATHEMATICAL AND RELATED SCIENCES  BOOK OF ABSTRACTS",
title = "Error Estimates for Gaussian Quadrature of Analytic Functions",
url = "https://hdl.handle.net/21.15107/rcub_machinery_7663"
}
Jandrlić, D., Pejčev, A.,& Spalević, M.. (2023). Error Estimates for Gaussian Quadrature of Analytic Functions. in 6TH INTERNATIONAL CONFERENCE ON MATHEMATICAL AND RELATED SCIENCES  BOOK OF ABSTRACTS.
https://hdl.handle.net/21.15107/rcub_machinery_7663
Jandrlić D, Pejčev A, Spalević M. Error Estimates for Gaussian Quadrature of Analytic Functions. in 6TH INTERNATIONAL CONFERENCE ON MATHEMATICAL AND RELATED SCIENCES  BOOK OF ABSTRACTS. 2023;.
https://hdl.handle.net/21.15107/rcub_machinery_7663 .
Jandrlić, Davorka, Pejčev, Aleksandar, Spalević, Miodrag, "Error Estimates for Gaussian Quadrature of Analytic Functions" in 6TH INTERNATIONAL CONFERENCE ON MATHEMATICAL AND RELATED SCIENCES  BOOK OF ABSTRACTS (2023),
https://hdl.handle.net/21.15107/rcub_machinery_7663 .

Error estimates for Gaussian quadrature formulae of analytic functions for various weight functions

Jandrlić, Davorka; Pejčev, Aleksandar; Miodrag, Spalević

(2023)

TY  - CONF
AU  - Jandrlić, Davorka
AU  - Pejčev, Aleksandar
AU  - Miodrag, Spalević
PY  - 2023
UR  - ICOLES 2023 https://icoles.net/
UR  - https://machinery.mas.bg.ac.rs/handle/123456789/7309
C3  - ICOLES 2023
T1  - Error estimates for Gaussian quadrature formulae of analytic functions for various weight functions
UR  - https://hdl.handle.net/21.15107/rcub_machinery_7309
ER  - 
@conference{
author = "Jandrlić, Davorka and Pejčev, Aleksandar and Miodrag, Spalević",
year = "2023",
journal = "ICOLES 2023",
title = "Error estimates for Gaussian quadrature formulae of analytic functions for various weight functions",
url = "https://hdl.handle.net/21.15107/rcub_machinery_7309"
}
Jandrlić, D., Pejčev, A.,& Miodrag, S.. (2023). Error estimates for Gaussian quadrature formulae of analytic functions for various weight functions. in ICOLES 2023.
https://hdl.handle.net/21.15107/rcub_machinery_7309
Jandrlić D, Pejčev A, Miodrag S. Error estimates for Gaussian quadrature formulae of analytic functions for various weight functions. in ICOLES 2023. 2023;.
https://hdl.handle.net/21.15107/rcub_machinery_7309 .
Jandrlić, Davorka, Pejčev, Aleksandar, Miodrag, Spalević, "Error estimates for Gaussian quadrature formulae of analytic functions for various weight functions" in ICOLES 2023 (2023),
https://hdl.handle.net/21.15107/rcub_machinery_7309 .

Numerical evaluation of the error term in Gaussian quadrature with the Legendre weight function

Jandrlić, Davorka; Krtinić, Đorđe; Mihić, Ljubica; Pejčev, Aleksandar; Spalević, Miodrag

(Faculty of Mechanical Engineering, University of Belgrade, 2022)

TY  - CONF
AU  - Jandrlić, Davorka
AU  - Krtinić, Đorđe
AU  - Mihić, Ljubica
AU  - Pejčev, Aleksandar
AU  - Spalević, Miodrag
PY  - 2022
UR  - https://machinery.mas.bg.ac.rs/handle/123456789/5161
PB  - Faculty of Mechanical Engineering, University of Belgrade
C3  - MNA conference, Book of abstracts
T1  - Numerical evaluation of the error term in Gaussian quadrature with the Legendre weight function
EP  - 13
SP  - 13
UR  - https://hdl.handle.net/21.15107/rcub_machinery_5161
ER  - 
@conference{
author = "Jandrlić, Davorka and Krtinić, Đorđe and Mihić, Ljubica and Pejčev, Aleksandar and Spalević, Miodrag",
year = "2022",
publisher = "Faculty of Mechanical Engineering, University of Belgrade",
journal = "MNA conference, Book of abstracts",
title = "Numerical evaluation of the error term in Gaussian quadrature with the Legendre weight function",
pages = "13-13",
url = "https://hdl.handle.net/21.15107/rcub_machinery_5161"
}
Jandrlić, D., Krtinić, Đ., Mihić, L., Pejčev, A.,& Spalević, M.. (2022). Numerical evaluation of the error term in Gaussian quadrature with the Legendre weight function. in MNA conference, Book of abstracts
Faculty of Mechanical Engineering, University of Belgrade., 13-13.
https://hdl.handle.net/21.15107/rcub_machinery_5161
Jandrlić D, Krtinić Đ, Mihić L, Pejčev A, Spalević M. Numerical evaluation of the error term in Gaussian quadrature with the Legendre weight function. in MNA conference, Book of abstracts. 2022;:13-13.
https://hdl.handle.net/21.15107/rcub_machinery_5161 .
Jandrlić, Davorka, Krtinić, Đorđe, Mihić, Ljubica, Pejčev, Aleksandar, Spalević, Miodrag, "Numerical evaluation of the error term in Gaussian quadrature with the Legendre weight function" in MNA conference, Book of abstracts (2022):13-13,
https://hdl.handle.net/21.15107/rcub_machinery_5161 .

Error term in Gauss quadrature with Legendre weight function for analytic functions

Jandrlić, Davorka; Mihić, Ljubica; Pejčev, Aleksandar; Spalević, Miodrag

(Faculty of Mechanical Engineering, University of Belgrade, 2022)

TY  - CONF
AU  - Jandrlić, Davorka
AU  - Mihić, Ljubica
AU  - Pejčev, Aleksandar
AU  - Spalević, Miodrag
PY  - 2022
UR  - https://machinery.mas.bg.ac.rs/handle/123456789/5158
PB  - Faculty of Mechanical Engineering, University of Belgrade
C3  - NMLSP conference, Book of abstracts
T1  - Error term in Gauss quadrature with Legendre weight function for analytic functions
EP  - 63
SP  - 63
UR  - https://hdl.handle.net/21.15107/rcub_machinery_5158
ER  - 
@conference{
author = "Jandrlić, Davorka and Mihić, Ljubica and Pejčev, Aleksandar and Spalević, Miodrag",
year = "2022",
publisher = "Faculty of Mechanical Engineering, University of Belgrade",
journal = "NMLSP conference, Book of abstracts",
title = "Error term in Gauss quadrature with Legendre weight function for analytic functions",
pages = "63-63",
url = "https://hdl.handle.net/21.15107/rcub_machinery_5158"
}
Jandrlić, D., Mihić, L., Pejčev, A.,& Spalević, M.. (2022). Error term in Gauss quadrature with Legendre weight function for analytic functions. in NMLSP conference, Book of abstracts
Faculty of Mechanical Engineering, University of Belgrade., 63-63.
https://hdl.handle.net/21.15107/rcub_machinery_5158
Jandrlić D, Mihić L, Pejčev A, Spalević M. Error term in Gauss quadrature with Legendre weight function for analytic functions. in NMLSP conference, Book of abstracts. 2022;:63-63.
https://hdl.handle.net/21.15107/rcub_machinery_5158 .
Jandrlić, Davorka, Mihić, Ljubica, Pejčev, Aleksandar, Spalević, Miodrag, "Error term in Gauss quadrature with Legendre weight function for analytic functions" in NMLSP conference, Book of abstracts (2022):63-63,
https://hdl.handle.net/21.15107/rcub_machinery_5158 .

Error Estimates for Certain Quadrature Formulae

Jandrlić, Davorka; Pejčev, Aleksandar; Spalević, Miodrag

(2022)

TY  - CONF
AU  - Jandrlić, Davorka
AU  - Pejčev, Aleksandar
AU  - Spalević, Miodrag
PY  - 2022
UR  - https://machinery.mas.bg.ac.rs/handle/123456789/5150
C3  - FAATNA 2020>22 conference, Book of abstracts
T1  - Error Estimates for Certain Quadrature Formulae
EP  - 195
SP  - 195
UR  - https://hdl.handle.net/21.15107/rcub_machinery_5150
ER  - 
@conference{
author = "Jandrlić, Davorka and Pejčev, Aleksandar and Spalević, Miodrag",
year = "2022",
journal = "FAATNA 2020>22 conference, Book of abstracts",
title = "Error Estimates for Certain Quadrature Formulae",
pages = "195-195",
url = "https://hdl.handle.net/21.15107/rcub_machinery_5150"
}
Jandrlić, D., Pejčev, A.,& Spalević, M.. (2022). Error Estimates for Certain Quadrature Formulae. in FAATNA 2020>22 conference, Book of abstracts, 195-195.
https://hdl.handle.net/21.15107/rcub_machinery_5150
Jandrlić D, Pejčev A, Spalević M. Error Estimates for Certain Quadrature Formulae. in FAATNA 2020>22 conference, Book of abstracts. 2022;:195-195.
https://hdl.handle.net/21.15107/rcub_machinery_5150 .
Jandrlić, Davorka, Pejčev, Aleksandar, Spalević, Miodrag, "Error Estimates for Certain Quadrature Formulae" in FAATNA 2020>22 conference, Book of abstracts (2022):195-195,
https://hdl.handle.net/21.15107/rcub_machinery_5150 .

Error bounds for gaussian quadrature formulae with legendre weight function for analytic integrands

Jandrlić, Davorka; KRTINić, D. M.; Mihić, Ljubica; Pejčev, Aleksandar; Spalević, Miodrag

(Kent State University, Kent, 2022)

TY  - JOUR
AU  - Jandrlić, Davorka
AU  - KRTINić, D. M.
AU  - Mihić, Ljubica
AU  - Pejčev, Aleksandar
AU  - Spalević, Miodrag
PY  - 2022
UR  - https://machinery.mas.bg.ac.rs/handle/123456789/3783
AB  - In this paper we are concerned with a method for the numerical evaluation of the error terms in Gaussian quadrature formulae with the Legendre weight function. Inspired by the work of H. Wang and L. Zhang [J. Sci. Comput., 75 (2018), pp. 457-477] and applying the results of S. Notaris [Math. Comp., 75 (2006), pp. 1217-1231], we determine an explicit formula for the kernel. This explicit expression is used for finding the points on ellipses where the maximum of the modulus of the kernel is attained. Effective error bounds for this quadrature formula for analytic integrands are derived.
PB  - Kent State University, Kent
T2  - Electronic Transactions on Numerical Analysis
T1  - Error bounds for gaussian quadrature formulae with legendre weight function for analytic integrands
EP  - 437
SP  - 424
VL  - 55
DO  - 10.1553/etna_vol55s424
ER  - 
@article{
author = "Jandrlić, Davorka and KRTINić, D. M. and Mihić, Ljubica and Pejčev, Aleksandar and Spalević, Miodrag",
year = "2022",
abstract = "In this paper we are concerned with a method for the numerical evaluation of the error terms in Gaussian quadrature formulae with the Legendre weight function. Inspired by the work of H. Wang and L. Zhang [J. Sci. Comput., 75 (2018), pp. 457-477] and applying the results of S. Notaris [Math. Comp., 75 (2006), pp. 1217-1231], we determine an explicit formula for the kernel. This explicit expression is used for finding the points on ellipses where the maximum of the modulus of the kernel is attained. Effective error bounds for this quadrature formula for analytic integrands are derived.",
publisher = "Kent State University, Kent",
journal = "Electronic Transactions on Numerical Analysis",
title = "Error bounds for gaussian quadrature formulae with legendre weight function for analytic integrands",
pages = "437-424",
volume = "55",
doi = "10.1553/etna_vol55s424"
}
Jandrlić, D., KRTINić, D. M., Mihić, L., Pejčev, A.,& Spalević, M.. (2022). Error bounds for gaussian quadrature formulae with legendre weight function for analytic integrands. in Electronic Transactions on Numerical Analysis
Kent State University, Kent., 55, 424-437.
https://doi.org/10.1553/etna_vol55s424
Jandrlić D, KRTINić DM, Mihić L, Pejčev A, Spalević M. Error bounds for gaussian quadrature formulae with legendre weight function for analytic integrands. in Electronic Transactions on Numerical Analysis. 2022;55:424-437.
doi:10.1553/etna_vol55s424 .
Jandrlić, Davorka, KRTINić, D. M., Mihić, Ljubica, Pejčev, Aleksandar, Spalević, Miodrag, "Error bounds for gaussian quadrature formulae with legendre weight function for analytic integrands" in Electronic Transactions on Numerical Analysis, 55 (2022):424-437,
https://doi.org/10.1553/etna_vol55s424 . .
1
1

The Error Estimates of Kronrod Extension for Gauss-Radau and Gauss-Lobatto Quadrature with the Four Chebyshev Weights

Jandrlić, Davorka; Pejčev, Aleksandar; Spalević, Miodrag

(Univerzitet u Nišu - Prirodno-matematički fakultet - Departmant za matematiku i informatiku, Niš, 2022)

TY  - JOUR
AU  - Jandrlić, Davorka
AU  - Pejčev, Aleksandar
AU  - Spalević, Miodrag
PY  - 2022
UR  - https://machinery.mas.bg.ac.rs/handle/123456789/3782
AB  - In this paper, we consider the Kronrod extension for the Gauss-Radau and Gauss-Lobatto quadrature consisting of any one of the four Chebyshev weights. The main purpose is to effectively estimate the error of these quadrature formulas. This estimate needs a calculation of the maximum of the modulus of the kernel. We compute explicitly the kernel function and determine the locations on the ellipses where a maximum modulus of the kernel is attained. Based on this, we derive effective error bounds of the Kronrod extensions if the integrand is an analytic function inside of a region bounded by a confocal ellipse that contains the interval of integration.
PB  - Univerzitet u Nišu - Prirodno-matematički fakultet - Departmant za matematiku i informatiku, Niš
T2  - Filomat
T1  - The Error Estimates of Kronrod Extension for Gauss-Radau and Gauss-Lobatto Quadrature with the Four Chebyshev Weights
EP  - 977
IS  - 3
SP  - 961
VL  - 36
DO  - 10.2298/FIL2203961J
ER  - 
@article{
author = "Jandrlić, Davorka and Pejčev, Aleksandar and Spalević, Miodrag",
year = "2022",
abstract = "In this paper, we consider the Kronrod extension for the Gauss-Radau and Gauss-Lobatto quadrature consisting of any one of the four Chebyshev weights. The main purpose is to effectively estimate the error of these quadrature formulas. This estimate needs a calculation of the maximum of the modulus of the kernel. We compute explicitly the kernel function and determine the locations on the ellipses where a maximum modulus of the kernel is attained. Based on this, we derive effective error bounds of the Kronrod extensions if the integrand is an analytic function inside of a region bounded by a confocal ellipse that contains the interval of integration.",
publisher = "Univerzitet u Nišu - Prirodno-matematički fakultet - Departmant za matematiku i informatiku, Niš",
journal = "Filomat",
title = "The Error Estimates of Kronrod Extension for Gauss-Radau and Gauss-Lobatto Quadrature with the Four Chebyshev Weights",
pages = "977-961",
number = "3",
volume = "36",
doi = "10.2298/FIL2203961J"
}
Jandrlić, D., Pejčev, A.,& Spalević, M.. (2022). The Error Estimates of Kronrod Extension for Gauss-Radau and Gauss-Lobatto Quadrature with the Four Chebyshev Weights. in Filomat
Univerzitet u Nišu - Prirodno-matematički fakultet - Departmant za matematiku i informatiku, Niš., 36(3), 961-977.
https://doi.org/10.2298/FIL2203961J
Jandrlić D, Pejčev A, Spalević M. The Error Estimates of Kronrod Extension for Gauss-Radau and Gauss-Lobatto Quadrature with the Four Chebyshev Weights. in Filomat. 2022;36(3):961-977.
doi:10.2298/FIL2203961J .
Jandrlić, Davorka, Pejčev, Aleksandar, Spalević, Miodrag, "The Error Estimates of Kronrod Extension for Gauss-Radau and Gauss-Lobatto Quadrature with the Four Chebyshev Weights" in Filomat, 36, no. 3 (2022):961-977,
https://doi.org/10.2298/FIL2203961J . .

Programiranje

Jandrlić, Davorka; Lazović, Goran; Vučić, Miloš

(2021)

TY  - BOOK
AU  - Jandrlić, Davorka
AU  - Lazović, Goran
AU  - Vučić, Miloš
PY  - 2021
UR  - https://machinery.mas.bg.ac.rs/handle/123456789/6482
T2  - Mašinski fakultet Univerzitet u Beogradu
T1  - Programiranje
UR  - https://hdl.handle.net/21.15107/rcub_machinery_6482
ER  - 
@book{
author = "Jandrlić, Davorka and Lazović, Goran and Vučić, Miloš",
year = "2021",
journal = "Mašinski fakultet Univerzitet u Beogradu",
title = "Programiranje",
url = "https://hdl.handle.net/21.15107/rcub_machinery_6482"
}
Jandrlić, D., Lazović, G.,& Vučić, M.. (2021). Programiranje. in Mašinski fakultet Univerzitet u Beogradu.
https://hdl.handle.net/21.15107/rcub_machinery_6482
Jandrlić D, Lazović G, Vučić M. Programiranje. in Mašinski fakultet Univerzitet u Beogradu. 2021;.
https://hdl.handle.net/21.15107/rcub_machinery_6482 .
Jandrlić, Davorka, Lazović, Goran, Vučić, Miloš, "Programiranje" in Mašinski fakultet Univerzitet u Beogradu (2021),
https://hdl.handle.net/21.15107/rcub_machinery_6482 .

Matematika 1: udžbenik i zbirka zadataka

Aranđelović, Ivan; Pejčev, Aleksandar; Đukić, Dušan; Jandrlić, Davorka; Tomanović, Jelena; Mutavdžić Đukić, Rada; Vučić, Miloš

(Univerzitet u Beogradu - Mašinski fakultet, 2020)

TY  - BOOK
AU  - Aranđelović, Ivan
AU  - Pejčev, Aleksandar
AU  - Đukić, Dušan
AU  - Jandrlić, Davorka
AU  - Tomanović, Jelena
AU  - Mutavdžić Đukić, Rada
AU  - Vučić, Miloš
PY  - 2020
UR  - https://machinery.mas.bg.ac.rs/handle/123456789/6256
PB  - Univerzitet u Beogradu - Mašinski fakultet
T2  - Univerzitet u Beogradu - Mašinski fakultet
T1  - Matematika 1: udžbenik i zbirka zadataka
UR  - https://hdl.handle.net/21.15107/rcub_machinery_6256
ER  - 
@book{
author = "Aranđelović, Ivan and Pejčev, Aleksandar and Đukić, Dušan and Jandrlić, Davorka and Tomanović, Jelena and Mutavdžić Đukić, Rada and Vučić, Miloš",
year = "2020",
publisher = "Univerzitet u Beogradu - Mašinski fakultet",
journal = "Univerzitet u Beogradu - Mašinski fakultet",
title = "Matematika 1: udžbenik i zbirka zadataka",
url = "https://hdl.handle.net/21.15107/rcub_machinery_6256"
}
Aranđelović, I., Pejčev, A., Đukić, D., Jandrlić, D., Tomanović, J., Mutavdžić Đukić, R.,& Vučić, M.. (2020). Matematika 1: udžbenik i zbirka zadataka. in Univerzitet u Beogradu - Mašinski fakultet
Univerzitet u Beogradu - Mašinski fakultet..
https://hdl.handle.net/21.15107/rcub_machinery_6256
Aranđelović I, Pejčev A, Đukić D, Jandrlić D, Tomanović J, Mutavdžić Đukić R, Vučić M. Matematika 1: udžbenik i zbirka zadataka. in Univerzitet u Beogradu - Mašinski fakultet. 2020;.
https://hdl.handle.net/21.15107/rcub_machinery_6256 .
Aranđelović, Ivan, Pejčev, Aleksandar, Đukić, Dušan, Jandrlić, Davorka, Tomanović, Jelena, Mutavdžić Đukić, Rada, Vučić, Miloš, "Matematika 1: udžbenik i zbirka zadataka" in Univerzitet u Beogradu - Mašinski fakultet (2020),
https://hdl.handle.net/21.15107/rcub_machinery_6256 .

Matematika 2

Aranđelović, Ivan; Jandrlić, Davorka; Pejčev, Aleksandar; Đukić, Dušan; Tomanović, Jelena; Mutavdžić Đukić, Rada

(Univerzitet u Beogradu - Mašinski fakultet, 2019)

TY  - BOOK
AU  - Aranđelović, Ivan
AU  - Jandrlić, Davorka
AU  - Pejčev, Aleksandar
AU  - Đukić, Dušan
AU  - Tomanović, Jelena
AU  - Mutavdžić Đukić, Rada
PY  - 2019
UR  - https://machinery.mas.bg.ac.rs/handle/123456789/6260
PB  - Univerzitet u Beogradu - Mašinski fakultet
T2  - Univerzitet u Beogradu - Mašinski fakultet
T1  - Matematika 2
UR  - https://hdl.handle.net/21.15107/rcub_machinery_6260
ER  - 
@book{
author = "Aranđelović, Ivan and Jandrlić, Davorka and Pejčev, Aleksandar and Đukić, Dušan and Tomanović, Jelena and Mutavdžić Đukić, Rada",
year = "2019",
publisher = "Univerzitet u Beogradu - Mašinski fakultet",
journal = "Univerzitet u Beogradu - Mašinski fakultet",
title = "Matematika 2",
url = "https://hdl.handle.net/21.15107/rcub_machinery_6260"
}
Aranđelović, I., Jandrlić, D., Pejčev, A., Đukić, D., Tomanović, J.,& Mutavdžić Đukić, R.. (2019). Matematika 2. in Univerzitet u Beogradu - Mašinski fakultet
Univerzitet u Beogradu - Mašinski fakultet..
https://hdl.handle.net/21.15107/rcub_machinery_6260
Aranđelović I, Jandrlić D, Pejčev A, Đukić D, Tomanović J, Mutavdžić Đukić R. Matematika 2. in Univerzitet u Beogradu - Mašinski fakultet. 2019;.
https://hdl.handle.net/21.15107/rcub_machinery_6260 .
Aranđelović, Ivan, Jandrlić, Davorka, Pejčev, Aleksandar, Đukić, Dušan, Tomanović, Jelena, Mutavdžić Đukić, Rada, "Matematika 2" in Univerzitet u Beogradu - Mašinski fakultet (2019),
https://hdl.handle.net/21.15107/rcub_machinery_6260 .

Error Estimates for Some Product Gauss Rules

Jandrlić, Davorka; Spalević, Miodrag; Tomanović, Jelena

(Department of Mathematics, Faculty of Science, Akdeniz University,Turkey, 2018)

TY  - CONF
AU  - Jandrlić, Davorka
AU  - Spalević, Miodrag
AU  - Tomanović, Jelena
PY  - 2018
UR  - https://machinery.mas.bg.ac.rs/handle/123456789/5179
PB  - Department of Mathematics, Faculty of Science, Akdeniz University,Turkey
C3  - Proceedings Book of MICOPAM2018 conference
T1  - Error Estimates for Some Product Gauss Rules
EP  - 70
SP  - 67
UR  - https://hdl.handle.net/21.15107/rcub_machinery_5179
ER  - 
@conference{
author = "Jandrlić, Davorka and Spalević, Miodrag and Tomanović, Jelena",
year = "2018",
publisher = "Department of Mathematics, Faculty of Science, Akdeniz University,Turkey",
journal = "Proceedings Book of MICOPAM2018 conference",
title = "Error Estimates for Some Product Gauss Rules",
pages = "70-67",
url = "https://hdl.handle.net/21.15107/rcub_machinery_5179"
}
Jandrlić, D., Spalević, M.,& Tomanović, J.. (2018). Error Estimates for Some Product Gauss Rules. in Proceedings Book of MICOPAM2018 conference
Department of Mathematics, Faculty of Science, Akdeniz University,Turkey., 67-70.
https://hdl.handle.net/21.15107/rcub_machinery_5179
Jandrlić D, Spalević M, Tomanović J. Error Estimates for Some Product Gauss Rules. in Proceedings Book of MICOPAM2018 conference. 2018;:67-70.
https://hdl.handle.net/21.15107/rcub_machinery_5179 .
Jandrlić, Davorka, Spalević, Miodrag, Tomanović, Jelena, "Error Estimates for Some Product Gauss Rules" in Proceedings Book of MICOPAM2018 conference (2018):67-70,
https://hdl.handle.net/21.15107/rcub_machinery_5179 .

Positional Biases of the Experimentally Characterized T-cell Epitopes

Mirjana, Pavlović; Jelović, Ana; Jandrlić, Davorka; Mitić, Nenad

(Belgrade : Faculty of Mathematics, 2018)

TY  - CONF
AU  - Mirjana, Pavlović
AU  - Jelović, Ana
AU  - Jandrlić, Davorka
AU  - Mitić, Nenad
PY  - 2018
UR  - http://euler.matf.bg.ac.rs/belbi2018
UR  - https://machinery.mas.bg.ac.rs/handle/123456789/6773
AB  - Binding to Major Histocompatibility Complex (MHC) class I  and class II molecules is the most restrictive step in T-cell epitope presentation. In humans these molecules are named Human Leukocyte Antigen (HLA) class I and II. However, only a minor part of MHC-binding epitopes are immunogenic. Thus, the most challinging part of T-cell prediction algorithms is to distinguish between immunogenic and nonimmunogenic epitopes.  Using HLA-binding data and T-cell functional assay data we have analyzed positional biases and hydropaty of T-cell epitopes in predicted structured and unstructured regions of protein Ag, in an attempt to find out differences between T-cell immunogenic and nonimmunogenic epitopes.
PB  - Belgrade : Faculty of Mathematics
C3  - Belgrade BioInformatics Conference – BelBi 2018
T1  - Positional Biases of the Experimentally Characterized T-cell Epitopes
UR  - https://hdl.handle.net/21.15107/rcub_machinery_6773
ER  - 
@conference{
author = "Mirjana, Pavlović and Jelović, Ana and Jandrlić, Davorka and Mitić, Nenad",
year = "2018",
abstract = "Binding to Major Histocompatibility Complex (MHC) class I  and class II molecules is the most restrictive step in T-cell epitope presentation. In humans these molecules are named Human Leukocyte Antigen (HLA) class I and II. However, only a minor part of MHC-binding epitopes are immunogenic. Thus, the most challinging part of T-cell prediction algorithms is to distinguish between immunogenic and nonimmunogenic epitopes.  Using HLA-binding data and T-cell functional assay data we have analyzed positional biases and hydropaty of T-cell epitopes in predicted structured and unstructured regions of protein Ag, in an attempt to find out differences between T-cell immunogenic and nonimmunogenic epitopes.",
publisher = "Belgrade : Faculty of Mathematics",
journal = "Belgrade BioInformatics Conference – BelBi 2018",
title = "Positional Biases of the Experimentally Characterized T-cell Epitopes",
url = "https://hdl.handle.net/21.15107/rcub_machinery_6773"
}
Mirjana, P., Jelović, A., Jandrlić, D.,& Mitić, N.. (2018). Positional Biases of the Experimentally Characterized T-cell Epitopes. in Belgrade BioInformatics Conference – BelBi 2018
Belgrade : Faculty of Mathematics..
https://hdl.handle.net/21.15107/rcub_machinery_6773
Mirjana P, Jelović A, Jandrlić D, Mitić N. Positional Biases of the Experimentally Characterized T-cell Epitopes. in Belgrade BioInformatics Conference – BelBi 2018. 2018;.
https://hdl.handle.net/21.15107/rcub_machinery_6773 .
Mirjana, Pavlović, Jelović, Ana, Jandrlić, Davorka, Mitić, Nenad, "Positional Biases of the Experimentally Characterized T-cell Epitopes" in Belgrade BioInformatics Conference – BelBi 2018 (2018),
https://hdl.handle.net/21.15107/rcub_machinery_6773 .

Error estimates for certain cubature rules

Jandrlić, Davorka; Spalević, Miodrag; Tomanović, Jelena

(2018)

TY  - CONF
AU  - Jandrlić, Davorka
AU  - Spalević, Miodrag
AU  - Tomanović, Jelena
PY  - 2018
UR  - https://machinery.mas.bg.ac.rs/handle/123456789/5343
C3  - 14SMAK 2018, Book of abstracts
T1  - Error estimates for certain cubature rules
UR  - https://hdl.handle.net/21.15107/rcub_machinery_5343
ER  - 
@conference{
author = "Jandrlić, Davorka and Spalević, Miodrag and Tomanović, Jelena",
year = "2018",
journal = "14SMAK 2018, Book of abstracts",
title = "Error estimates for certain cubature rules",
url = "https://hdl.handle.net/21.15107/rcub_machinery_5343"
}
Jandrlić, D., Spalević, M.,& Tomanović, J.. (2018). Error estimates for certain cubature rules. in 14SMAK 2018, Book of abstracts.
https://hdl.handle.net/21.15107/rcub_machinery_5343
Jandrlić D, Spalević M, Tomanović J. Error estimates for certain cubature rules. in 14SMAK 2018, Book of abstracts. 2018;.
https://hdl.handle.net/21.15107/rcub_machinery_5343 .
Jandrlić, Davorka, Spalević, Miodrag, Tomanović, Jelena, "Error estimates for certain cubature rules" in 14SMAK 2018, Book of abstracts (2018),
https://hdl.handle.net/21.15107/rcub_machinery_5343 .

Error Estimates for Certain Cubature Formulae

Jandrlić, Davorka; Spalević, Miodrag; Tomanović, Jelena

(Univerzitet u Nišu - Prirodno-matematički fakultet - Departmant za matematiku i informatiku, Niš, 2018)

TY  - JOUR
AU  - Jandrlić, Davorka
AU  - Spalević, Miodrag
AU  - Tomanović, Jelena
PY  - 2018
UR  - https://machinery.mas.bg.ac.rs/handle/123456789/2822
AB  - We estimate the errors of selected cubature formulae constructed by the product of Gauss quadrature rules. The cases of multiple and (hyper-)surface integrals over n-dimensional cube, simplex, sphere and ball are considered. The error estimates are obtained as the absolute value of the difference between cubature formula constructed by the product of Gauss quadrature rules and cubature formula constructed by the product of corresponding Gauss-Kronrod or corresponding generalized averaged Gaussian quadrature rules. Generalized averaged Gaussian quadrature rule (G) over cap (2l+1) is (2l + 1)-point quadrature formula. It has 2l + 1 nodes and the nodes of the corresponding Gauss rule G(l) with l nodes form a subset, similar to the situation for the (2l + 1)-point Gauss-Kronrod rule H2l+1 associated with G(l). The advantages of (G) over cap (2l+1) are that it exists also when H2l+1 does not, and that the numerical construction of (G) over cap (2l+1), based on recently proposed effective numerical procedure, is simpler than the construction of H2l+1.
PB  - Univerzitet u Nišu - Prirodno-matematički fakultet - Departmant za matematiku i informatiku, Niš
T2  - Filomat
T1  - Error Estimates for Certain Cubature Formulae
EP  - 6902
IS  - 20
SP  - 6893
VL  - 32
DO  - 10.2298/FIL1820893J
ER  - 
@article{
author = "Jandrlić, Davorka and Spalević, Miodrag and Tomanović, Jelena",
year = "2018",
abstract = "We estimate the errors of selected cubature formulae constructed by the product of Gauss quadrature rules. The cases of multiple and (hyper-)surface integrals over n-dimensional cube, simplex, sphere and ball are considered. The error estimates are obtained as the absolute value of the difference between cubature formula constructed by the product of Gauss quadrature rules and cubature formula constructed by the product of corresponding Gauss-Kronrod or corresponding generalized averaged Gaussian quadrature rules. Generalized averaged Gaussian quadrature rule (G) over cap (2l+1) is (2l + 1)-point quadrature formula. It has 2l + 1 nodes and the nodes of the corresponding Gauss rule G(l) with l nodes form a subset, similar to the situation for the (2l + 1)-point Gauss-Kronrod rule H2l+1 associated with G(l). The advantages of (G) over cap (2l+1) are that it exists also when H2l+1 does not, and that the numerical construction of (G) over cap (2l+1), based on recently proposed effective numerical procedure, is simpler than the construction of H2l+1.",
publisher = "Univerzitet u Nišu - Prirodno-matematički fakultet - Departmant za matematiku i informatiku, Niš",
journal = "Filomat",
title = "Error Estimates for Certain Cubature Formulae",
pages = "6902-6893",
number = "20",
volume = "32",
doi = "10.2298/FIL1820893J"
}
Jandrlić, D., Spalević, M.,& Tomanović, J.. (2018). Error Estimates for Certain Cubature Formulae. in Filomat
Univerzitet u Nišu - Prirodno-matematički fakultet - Departmant za matematiku i informatiku, Niš., 32(20), 6893-6902.
https://doi.org/10.2298/FIL1820893J
Jandrlić D, Spalević M, Tomanović J. Error Estimates for Certain Cubature Formulae. in Filomat. 2018;32(20):6893-6902.
doi:10.2298/FIL1820893J .
Jandrlić, Davorka, Spalević, Miodrag, Tomanović, Jelena, "Error Estimates for Certain Cubature Formulae" in Filomat, 32, no. 20 (2018):6893-6902,
https://doi.org/10.2298/FIL1820893J . .
1
1

Error estimates for certain cubature formulae

Jandrlić, Davorka; Spalević, Miodrag; Tomanović, Jelena

(Serbian Academy of Sciences and Arts, 2017)

TY  - CONF
AU  - Jandrlić, Davorka
AU  - Spalević, Miodrag
AU  - Tomanović, Jelena
PY  - 2017
UR  - https://easychair.org/smart-program/ACTA2017/index.html
UR  - https://machinery.mas.bg.ac.rs/handle/123456789/5177
PB  - Serbian Academy of Sciences and Arts
C3  - ACTA 2017, Book of abstarcts
T1  - Error estimates for certain cubature formulae
EP  - 27
SP  - 27
UR  - https://hdl.handle.net/21.15107/rcub_machinery_5177
ER  - 
@conference{
author = "Jandrlić, Davorka and Spalević, Miodrag and Tomanović, Jelena",
year = "2017",
publisher = "Serbian Academy of Sciences and Arts",
journal = "ACTA 2017, Book of abstarcts",
title = "Error estimates for certain cubature formulae",
pages = "27-27",
url = "https://hdl.handle.net/21.15107/rcub_machinery_5177"
}
Jandrlić, D., Spalević, M.,& Tomanović, J.. (2017). Error estimates for certain cubature formulae. in ACTA 2017, Book of abstarcts
Serbian Academy of Sciences and Arts., 27-27.
https://hdl.handle.net/21.15107/rcub_machinery_5177
Jandrlić D, Spalević M, Tomanović J. Error estimates for certain cubature formulae. in ACTA 2017, Book of abstarcts. 2017;:27-27.
https://hdl.handle.net/21.15107/rcub_machinery_5177 .
Jandrlić, Davorka, Spalević, Miodrag, Tomanović, Jelena, "Error estimates for certain cubature formulae" in ACTA 2017, Book of abstarcts (2017):27-27,
https://hdl.handle.net/21.15107/rcub_machinery_5177 .

T-cell epitope prediction, the influence of amino acids physicochemical propeterties and frequencies on identifying MHC binding ligands

Jandrlić, Davorka; Mitić, Nenad; Pavlović, Mirjana

(Belgrade : Faculty of Mathematics, University, 2017)

TY  - CONF
AU  - Jandrlić, Davorka
AU  - Mitić, Nenad
AU  - Pavlović, Mirjana
PY  - 2017
UR  - http://euler.matf.bg.ac.rs/belbi2016/
UR  - https://machinery.mas.bg.ac.rs/handle/123456789/6772
AB  - Binding of peptides to MHC class I molecules is essential and the most selective step that determines T cell epitopes. Therefore, prediction of MHC-peptide binding presents the principal basis for anticipating potential T cell epitopes. The immense relevance of epitope identification in vaccine design has prompted the development of many computational methods. All of them have advantages and drawbacks. Although some available methods have reasonable accuracy, there is no guarantee that all models produce good quality predictions [1]. The aim of computational methods is to reduce the laboratory expensive experiments [2], that is way every effort to improve performance of existing methods or make reliable new method is important.
PB  - Belgrade : Faculty of Mathematics, University
C3  - Proceedings Belgrade BioInformatics Conference 2016 20-24 June 2016, Belgrade, Serbia
T1  - T-cell epitope prediction, the influence of amino acids physicochemical propeterties and frequencies on identifying MHC binding ligands
EP  - 63
SP  - 55
UR  - https://hdl.handle.net/21.15107/rcub_machinery_6772
ER  - 
@conference{
author = "Jandrlić, Davorka and Mitić, Nenad and Pavlović, Mirjana",
year = "2017",
abstract = "Binding of peptides to MHC class I molecules is essential and the most selective step that determines T cell epitopes. Therefore, prediction of MHC-peptide binding presents the principal basis for anticipating potential T cell epitopes. The immense relevance of epitope identification in vaccine design has prompted the development of many computational methods. All of them have advantages and drawbacks. Although some available methods have reasonable accuracy, there is no guarantee that all models produce good quality predictions [1]. The aim of computational methods is to reduce the laboratory expensive experiments [2], that is way every effort to improve performance of existing methods or make reliable new method is important.",
publisher = "Belgrade : Faculty of Mathematics, University",
journal = "Proceedings Belgrade BioInformatics Conference 2016 20-24 June 2016, Belgrade, Serbia",
title = "T-cell epitope prediction, the influence of amino acids physicochemical propeterties and frequencies on identifying MHC binding ligands",
pages = "63-55",
url = "https://hdl.handle.net/21.15107/rcub_machinery_6772"
}
Jandrlić, D., Mitić, N.,& Pavlović, M.. (2017). T-cell epitope prediction, the influence of amino acids physicochemical propeterties and frequencies on identifying MHC binding ligands. in Proceedings Belgrade BioInformatics Conference 2016 20-24 June 2016, Belgrade, Serbia
Belgrade : Faculty of Mathematics, University., 55-63.
https://hdl.handle.net/21.15107/rcub_machinery_6772
Jandrlić D, Mitić N, Pavlović M. T-cell epitope prediction, the influence of amino acids physicochemical propeterties and frequencies on identifying MHC binding ligands. in Proceedings Belgrade BioInformatics Conference 2016 20-24 June 2016, Belgrade, Serbia. 2017;:55-63.
https://hdl.handle.net/21.15107/rcub_machinery_6772 .
Jandrlić, Davorka, Mitić, Nenad, Pavlović, Mirjana, "T-cell epitope prediction, the influence of amino acids physicochemical propeterties and frequencies on identifying MHC binding ligands" in Proceedings Belgrade BioInformatics Conference 2016 20-24 June 2016, Belgrade, Serbia (2017):55-63,
https://hdl.handle.net/21.15107/rcub_machinery_6772 .

The rule based classification models for MHC binding prediction and identification of the most relevant physicochemical properties for the individual allele

Jandrlić, Davorka

(Univerzitet u Prištini - Prirodno-matematički fakultet, Kosovska Mitrovica, 2016)

TY  - JOUR
AU  - Jandrlić, Davorka
PY  - 2016
UR  - https://machinery.mas.bg.ac.rs/handle/123456789/2261
AB  - Binding of proteolyzed fragments of proteins to MHC molecules is essential and the most selective step that determines T-cell epitopes. Therefore, the prediction of MHC-peptide binding is principal for anticipating potential T cell epitopes and is of immense relevance in vaccine design. Despite numerous methods for predicting MHC binding ligands, there still exist limitations that affect the reliability of a prevailing number of methods. Certain important methods based on physicochemical properties have very low reported accuracy. The aim of this paper is to present a new approach of extracting the most important physicochemical properties that influence the classification of MHC-binding ligands. In this study, we have developed rule based classification models which take into account the physicochemical properties of amino acids and their frequencies. The models use k-means clustering technique for extracting the relevant physicochemical properties. The results of the study indicate that the physicochemical properties of amino acids contribute significantly to the peptide-binding and that the different alleles are characterized by a different set of the physicochemical properties.
PB  - Univerzitet u Prištini - Prirodno-matematički fakultet, Kosovska Mitrovica
T2  - The University Thought - Publication in Natural Sciences
T1  - The rule based classification models for MHC binding prediction and identification of the most relevant physicochemical properties for the individual allele
EP  - 66
IS  - 1
SP  - 60
VL  - 6
DO  - 10.5937/univtho6-10768
ER  - 
@article{
author = "Jandrlić, Davorka",
year = "2016",
abstract = "Binding of proteolyzed fragments of proteins to MHC molecules is essential and the most selective step that determines T-cell epitopes. Therefore, the prediction of MHC-peptide binding is principal for anticipating potential T cell epitopes and is of immense relevance in vaccine design. Despite numerous methods for predicting MHC binding ligands, there still exist limitations that affect the reliability of a prevailing number of methods. Certain important methods based on physicochemical properties have very low reported accuracy. The aim of this paper is to present a new approach of extracting the most important physicochemical properties that influence the classification of MHC-binding ligands. In this study, we have developed rule based classification models which take into account the physicochemical properties of amino acids and their frequencies. The models use k-means clustering technique for extracting the relevant physicochemical properties. The results of the study indicate that the physicochemical properties of amino acids contribute significantly to the peptide-binding and that the different alleles are characterized by a different set of the physicochemical properties.",
publisher = "Univerzitet u Prištini - Prirodno-matematički fakultet, Kosovska Mitrovica",
journal = "The University Thought - Publication in Natural Sciences",
title = "The rule based classification models for MHC binding prediction and identification of the most relevant physicochemical properties for the individual allele",
pages = "66-60",
number = "1",
volume = "6",
doi = "10.5937/univtho6-10768"
}
Jandrlić, D.. (2016). The rule based classification models for MHC binding prediction and identification of the most relevant physicochemical properties for the individual allele. in The University Thought - Publication in Natural Sciences
Univerzitet u Prištini - Prirodno-matematički fakultet, Kosovska Mitrovica., 6(1), 60-66.
https://doi.org/10.5937/univtho6-10768
Jandrlić D. The rule based classification models for MHC binding prediction and identification of the most relevant physicochemical properties for the individual allele. in The University Thought - Publication in Natural Sciences. 2016;6(1):60-66.
doi:10.5937/univtho6-10768 .
Jandrlić, Davorka, "The rule based classification models for MHC binding prediction and identification of the most relevant physicochemical properties for the individual allele" in The University Thought - Publication in Natural Sciences, 6, no. 1 (2016):60-66,
https://doi.org/10.5937/univtho6-10768 . .
1

Primena pravila pridruživanja i metoda podržavajućih vektora za predviđanje T - ćelijskih epitopa

Jandrlić, Davorka

(Univerzitet u Beogradu, Matematički fakultet, 2016)

TY  - THES
AU  - Jandrlić, Davorka
PY  - 2016
UR  - https://nardus.mpn.gov.rs/handle/123456789/7971
UR  - http://eteze.bg.ac.rs/application/showtheses?thesesId=4835
UR  - https://fedorabg.bg.ac.rs/fedora/get/o:15162/bdef:Content/download
UR  - http://vbs.rs/scripts/cobiss?command=DISPLAY&base=70036&RID=48819471
UR  - https://machinery.mas.bg.ac.rs/handle/123456789/42
AB  - Istraživanje podataka (eng. Data mining)je interdisciplinarno polje informatike koje se bavi automatskim ili polu-automatskim otkrivanjem znanja u podacima. Osnovni zadatak istraživanja podataka je izdvajanje netrivijalnih, prethodno nepoznatih i potencijalno korisnih obrazaca, odnosa i veza u podacima i statistički značajnih struktura iz velikih kolekcija podataka. Imperativ je da dobijeni rezultati budu novi, valjani, korisni i razumljivi. Tehnike za istraživanje podataka uključuju statističke modele, matematičke algoritme i metode mašinskog učenja...
AB  - Data mining is an interdisciplinary subfield of computer science, including various scientific disciplines such as: database systems, statistics, machine learning, artificial intelligence and the others. The main task of data mining is automatic and semi-automatic analysis of large quantities of data to extract previously unknown, nontrivial and interesting patterns. Rapid development in the fields of immunology, genomics, proteomics, molecular biology and other related areas has caused a large increase in biological data. Drawing conclusions from these data requires sophisticated computational analyses. Without automatic methods to extract data it is almost impossible to investigate and analyze this data. Currently, one of the most active problems in immunoinformatics is T - cell epitope identification. Identification of T - cell epitopes, especially dominant T - cell epitopes widely represented in population, is of the immense relevance in vaccine development and detecting immunological patterns characteristic for autoimmune diseases. Epitope-based vaccines are of great importance in combating infectious and chronic diseases and various types of cancer. Experimental methods for identification of T - cell epitopes are expensive, time consuming, and are not applicable for large scale research (especially not for the choice of the optimal group of epitopes for vaccine development which will cover the whole population or personalized vaccines). Computational and mathematical models for T - cell epitope prediction, based on MHC-peptide binding, are crucial to enable the systematic investigation and identification of T - cell epitopes on a large dataset and to complement expensive and time consuming experimentation [16]. T - cells (T - lymphocytes) recognize protein antigen(s) only when degradated to peptide fragments and complexed with Major Histocompatibility Complex (MHC) molecules on the surface of antigen-presenting cells [1]. The binding of these peptides (potential epitopes) to MHC molecules and presentation to T - cells is a crucial (and the most selective) step in both cellular and humoral adoptive immunity. Currently exist numerous of methodologies that provide identification of these epitopes. In this PhD thesis, discussed methods are exclusively based on peptide sequence binding to MHC molecules. It describes existing methodologies for T - cell epitope prediction, the shortcomings of existing methods and some of the available databases of experimentally determined linear T - cell epitopes. The new models for T - cell epitope prediction using data mining techniques are developed and extensive analyses concerning to whether disorder and hydropathy prediction methods could help understanding epitope processing and presentation is done. Accurate computational prediction of T cell epitope, which is the aim of this thesis, can greatly expedite epitope screening by reducing costs and experimental effort. These theses deals with predictive data mining tasks: classification and regression, and descriptive data mining tasks: clustering, association rules and sequence analysis. The new-developed models, which are main contribution of the dissertation are comparable in performance with the best currently existing methods, and even better in some cases. Developed models are based on the support vector machine technique for classification and regression problems. A new approach of extracting the most important physicochemical properties that influence the classification of MHC-binding ligands is also presented. For that purpose are developed new clustering-based classification models. The models are based on k-means clustering technique. The second part of the thesis concerns the establishment of rules and associations of T - cell epitopes that belong to different protein structures. The task of this part of research was to find out whether disorder and hydropathy prediction methods could help in understanding epitope processing and presentation. The results of the application of an association rule technique and thorough analysis over large protein dataset where T cell epitopes, protein structure and hydropathy has been determined computationally, using publicly available tools, are presented. During the research on this theses new extendable open source software system that support bioinformatic research and have wide applications in prediction of various proteins characteristics is developed. A part of this thesis is described in the works [71][82][45][42][43][44][72][73] that are published or submitted for publications in several journals. The dissertation is organized as follows: In section1 is illustrated introduction to the problem of identifying T - cell epitopes, the importance of mathematical and computational methods in this area,  as well as the importance of T - cell epitopes to the immune system and basis for functioning of the immune system. In section 2 are described in details data mining techniques that are used in the thesis for development of new models. Section 3 provides an overview of existing methods for predicting the T - cell epitopes and explains the work methodologies of existing models and methods. It pointed out the shortcomings of existing methods which have been the motivation for the development of new models for the T - cell epitope prediction. Some of the publicly available databases with the experimentally determined MHC binding peptides and T - cell epitope are described. In section 4 are presented new developed models for epitopes prediction. The developed models include three new encoding schemes for peptide sequences representation in the form of a vector which is more suitable as input to models based on the data mining techniques. Section 5 reports results of presented new classification and regression models. The new models are compared with each other as well as with currently existing methods for T cell epitope prediction. Section 6 presents the research results of the T - cell epitopes relationship with ordered and disordered regions in proteins. In the context of this chapter summary results are presented which are shown in more detail in the published works [71][82][45][44]. Section 7 concludes the dissertation with some discussion of the potential significance of obtained results and some directions for future work.
PB  - Univerzitet u Beogradu, Matematički fakultet
T1  - Primena pravila pridruživanja i metoda podržavajućih vektora za predviđanje T - ćelijskih epitopa
T1  - Application of association rule and support vector machine technique for T - cell epitope prediction
UR  - https://hdl.handle.net/21.15107/rcub_nardus_7971
ER  - 
@phdthesis{
author = "Jandrlić, Davorka",
year = "2016",
abstract = "Istraživanje podataka (eng. Data mining)je interdisciplinarno polje informatike koje se bavi automatskim ili polu-automatskim otkrivanjem znanja u podacima. Osnovni zadatak istraživanja podataka je izdvajanje netrivijalnih, prethodno nepoznatih i potencijalno korisnih obrazaca, odnosa i veza u podacima i statistički značajnih struktura iz velikih kolekcija podataka. Imperativ je da dobijeni rezultati budu novi, valjani, korisni i razumljivi. Tehnike za istraživanje podataka uključuju statističke modele, matematičke algoritme i metode mašinskog učenja..., Data mining is an interdisciplinary subfield of computer science, including various scientific disciplines such as: database systems, statistics, machine learning, artificial intelligence and the others. The main task of data mining is automatic and semi-automatic analysis of large quantities of data to extract previously unknown, nontrivial and interesting patterns. Rapid development in the fields of immunology, genomics, proteomics, molecular biology and other related areas has caused a large increase in biological data. Drawing conclusions from these data requires sophisticated computational analyses. Without automatic methods to extract data it is almost impossible to investigate and analyze this data. Currently, one of the most active problems in immunoinformatics is T - cell epitope identification. Identification of T - cell epitopes, especially dominant T - cell epitopes widely represented in population, is of the immense relevance in vaccine development and detecting immunological patterns characteristic for autoimmune diseases. Epitope-based vaccines are of great importance in combating infectious and chronic diseases and various types of cancer. Experimental methods for identification of T - cell epitopes are expensive, time consuming, and are not applicable for large scale research (especially not for the choice of the optimal group of epitopes for vaccine development which will cover the whole population or personalized vaccines). Computational and mathematical models for T - cell epitope prediction, based on MHC-peptide binding, are crucial to enable the systematic investigation and identification of T - cell epitopes on a large dataset and to complement expensive and time consuming experimentation [16]. T - cells (T - lymphocytes) recognize protein antigen(s) only when degradated to peptide fragments and complexed with Major Histocompatibility Complex (MHC) molecules on the surface of antigen-presenting cells [1]. The binding of these peptides (potential epitopes) to MHC molecules and presentation to T - cells is a crucial (and the most selective) step in both cellular and humoral adoptive immunity. Currently exist numerous of methodologies that provide identification of these epitopes. In this PhD thesis, discussed methods are exclusively based on peptide sequence binding to MHC molecules. It describes existing methodologies for T - cell epitope prediction, the shortcomings of existing methods and some of the available databases of experimentally determined linear T - cell epitopes. The new models for T - cell epitope prediction using data mining techniques are developed and extensive analyses concerning to whether disorder and hydropathy prediction methods could help understanding epitope processing and presentation is done. Accurate computational prediction of T cell epitope, which is the aim of this thesis, can greatly expedite epitope screening by reducing costs and experimental effort. These theses deals with predictive data mining tasks: classification and regression, and descriptive data mining tasks: clustering, association rules and sequence analysis. The new-developed models, which are main contribution of the dissertation are comparable in performance with the best currently existing methods, and even better in some cases. Developed models are based on the support vector machine technique for classification and regression problems. A new approach of extracting the most important physicochemical properties that influence the classification of MHC-binding ligands is also presented. For that purpose are developed new clustering-based classification models. The models are based on k-means clustering technique. The second part of the thesis concerns the establishment of rules and associations of T - cell epitopes that belong to different protein structures. The task of this part of research was to find out whether disorder and hydropathy prediction methods could help in understanding epitope processing and presentation. The results of the application of an association rule technique and thorough analysis over large protein dataset where T cell epitopes, protein structure and hydropathy has been determined computationally, using publicly available tools, are presented. During the research on this theses new extendable open source software system that support bioinformatic research and have wide applications in prediction of various proteins characteristics is developed. A part of this thesis is described in the works [71][82][45][42][43][44][72][73] that are published or submitted for publications in several journals. The dissertation is organized as follows: In section1 is illustrated introduction to the problem of identifying T - cell epitopes, the importance of mathematical and computational methods in this area,  as well as the importance of T - cell epitopes to the immune system and basis for functioning of the immune system. In section 2 are described in details data mining techniques that are used in the thesis for development of new models. Section 3 provides an overview of existing methods for predicting the T - cell epitopes and explains the work methodologies of existing models and methods. It pointed out the shortcomings of existing methods which have been the motivation for the development of new models for the T - cell epitope prediction. Some of the publicly available databases with the experimentally determined MHC binding peptides and T - cell epitope are described. In section 4 are presented new developed models for epitopes prediction. The developed models include three new encoding schemes for peptide sequences representation in the form of a vector which is more suitable as input to models based on the data mining techniques. Section 5 reports results of presented new classification and regression models. The new models are compared with each other as well as with currently existing methods for T cell epitope prediction. Section 6 presents the research results of the T - cell epitopes relationship with ordered and disordered regions in proteins. In the context of this chapter summary results are presented which are shown in more detail in the published works [71][82][45][44]. Section 7 concludes the dissertation with some discussion of the potential significance of obtained results and some directions for future work.",
publisher = "Univerzitet u Beogradu, Matematički fakultet",
title = "Primena pravila pridruživanja i metoda podržavajućih vektora za predviđanje T - ćelijskih epitopa, Application of association rule and support vector machine technique for T - cell epitope prediction",
url = "https://hdl.handle.net/21.15107/rcub_nardus_7971"
}
Jandrlić, D.. (2016). Primena pravila pridruživanja i metoda podržavajućih vektora za predviđanje T - ćelijskih epitopa. 
Univerzitet u Beogradu, Matematički fakultet..
https://hdl.handle.net/21.15107/rcub_nardus_7971
Jandrlić D. Primena pravila pridruživanja i metoda podržavajućih vektora za predviđanje T - ćelijskih epitopa. 2016;.
https://hdl.handle.net/21.15107/rcub_nardus_7971 .
Jandrlić, Davorka, "Primena pravila pridruživanja i metoda podržavajućih vektora za predviđanje T - ćelijskih epitopa" (2016),
https://hdl.handle.net/21.15107/rcub_nardus_7971 .

Software tools for simultaneous data visualization and T cell epitopes and disorder prediction in proteins

Jandrlić, Davorka; Lazić, Goran M.; Mitić, Nenad S.; Pavlović, Mirjana D.

(Academic Press Inc Elsevier Science, San Diego, 2016)

TY  - JOUR
AU  - Jandrlić, Davorka
AU  - Lazić, Goran M.
AU  - Mitić, Nenad S.
AU  - Pavlović, Mirjana D.
PY  - 2016
UR  - https://machinery.mas.bg.ac.rs/handle/123456789/2405
AB  - We have developed EpDis and MassPred, extendable open source software tools that support bioinformatic research and enable parallel use of different methods for the prediction of T cell epitopes, disorder and disordered binding regions and hydropathy calculation. These tools offer a semi-automated installation of chosen sets of external predictors and an interface allowing for easy application of the prediction methods, which can be applied either to individual proteins or to datasets of a large number of proteins. In addition to access to prediction methods, the tools also provide visualization of the obtained results, calculation of consensus from results of different methods, as well as import of experimental data and their comparison with results obtained with different predictors. The tools also offer a graphical user interface and the possibility to store data and the results obtained using all of the integrated methods in the relational database or flat file for further analysis. The MassPred part enables a massive parallel application of all integrated predictors to the set of proteins. Both tools can be downloaded from http://bioinfo.matf.bg.ac.rs/home/downloads.wafl?cat=Software. Appendix A includes the technical description of the created tools and a list of supported predictors.
PB  - Academic Press Inc Elsevier Science, San Diego
T2  - Journal of Biomedical Informatics
T1  - Software tools for simultaneous data visualization and T cell epitopes and disorder prediction in proteins
EP  - 131
SP  - 120
VL  - 60
DO  - 10.1016/j.jbi.2016.01.016
ER  - 
@article{
author = "Jandrlić, Davorka and Lazić, Goran M. and Mitić, Nenad S. and Pavlović, Mirjana D.",
year = "2016",
abstract = "We have developed EpDis and MassPred, extendable open source software tools that support bioinformatic research and enable parallel use of different methods for the prediction of T cell epitopes, disorder and disordered binding regions and hydropathy calculation. These tools offer a semi-automated installation of chosen sets of external predictors and an interface allowing for easy application of the prediction methods, which can be applied either to individual proteins or to datasets of a large number of proteins. In addition to access to prediction methods, the tools also provide visualization of the obtained results, calculation of consensus from results of different methods, as well as import of experimental data and their comparison with results obtained with different predictors. The tools also offer a graphical user interface and the possibility to store data and the results obtained using all of the integrated methods in the relational database or flat file for further analysis. The MassPred part enables a massive parallel application of all integrated predictors to the set of proteins. Both tools can be downloaded from http://bioinfo.matf.bg.ac.rs/home/downloads.wafl?cat=Software. Appendix A includes the technical description of the created tools and a list of supported predictors.",
publisher = "Academic Press Inc Elsevier Science, San Diego",
journal = "Journal of Biomedical Informatics",
title = "Software tools for simultaneous data visualization and T cell epitopes and disorder prediction in proteins",
pages = "131-120",
volume = "60",
doi = "10.1016/j.jbi.2016.01.016"
}
Jandrlić, D., Lazić, G. M., Mitić, N. S.,& Pavlović, M. D.. (2016). Software tools for simultaneous data visualization and T cell epitopes and disorder prediction in proteins. in Journal of Biomedical Informatics
Academic Press Inc Elsevier Science, San Diego., 60, 120-131.
https://doi.org/10.1016/j.jbi.2016.01.016
Jandrlić D, Lazić GM, Mitić NS, Pavlović MD. Software tools for simultaneous data visualization and T cell epitopes and disorder prediction in proteins. in Journal of Biomedical Informatics. 2016;60:120-131.
doi:10.1016/j.jbi.2016.01.016 .
Jandrlić, Davorka, Lazić, Goran M., Mitić, Nenad S., Pavlović, Mirjana D., "Software tools for simultaneous data visualization and T cell epitopes and disorder prediction in proteins" in Journal of Biomedical Informatics, 60 (2016):120-131,
https://doi.org/10.1016/j.jbi.2016.01.016 . .
10
4
10

SVM and SVR-based MHC-binding prediction using a mathematical presentation of peptide sequences

Jandrlić, Davorka

(Elsevier Sci Ltd, Oxford, 2016)

TY  - JOUR
AU  - Jandrlić, Davorka
PY  - 2016
UR  - https://machinery.mas.bg.ac.rs/handle/123456789/2335
AB  - At present, there are a number of methods for the prediction of T-cell epitopes and major histocompatibility complex (MHC)-binding peptides. Despite numerous methods for predicting T-cell epitopes, there still exist limitations that affect the reliability of prevailing methods. For this reason, the development of models with high accuracy are crucial. An accurate prediction of the peptides that bind to specific major histocompatibility complex class I and II (MHC-I and MHC-II) molecules is important for an understanding of the functioning of the immune system and the development of peptide-based vaccines. Peptide binding is the most selective step in identifying T-cell epitopes. In this paper, we present a new approach to predicting MHC-binding ligands that takes into account new weighting schemes for position-based amino acid frequencies, BLOSUM and VOGG substitution of amino acids, and the physicochemical and molecular properties of amino acids. We have made models for quantitatively and qualitatively predicting MHC-binding ligands. Our models are based on two machine learning methods support vector machine (SVM) and support vector regression (SVR), where our models have used for feature selection, several different encoding and weighting schemes for peptides. The resulting models showed comparable, and in some cases better, performance than the best existing predictors. The obtained results indicate that the physicochemical and molecular properties of amino acids (AA) contribute significantly to the peptide-binding affinity.
PB  - Elsevier Sci Ltd, Oxford
T2  - Computational Biology and Chemistry
T1  - SVM and SVR-based MHC-binding prediction using a mathematical presentation of peptide sequences
EP  - 127
SP  - 117
VL  - 65
DO  - 10.1016/j.compbiolchem.2016.10.011
ER  - 
@article{
author = "Jandrlić, Davorka",
year = "2016",
abstract = "At present, there are a number of methods for the prediction of T-cell epitopes and major histocompatibility complex (MHC)-binding peptides. Despite numerous methods for predicting T-cell epitopes, there still exist limitations that affect the reliability of prevailing methods. For this reason, the development of models with high accuracy are crucial. An accurate prediction of the peptides that bind to specific major histocompatibility complex class I and II (MHC-I and MHC-II) molecules is important for an understanding of the functioning of the immune system and the development of peptide-based vaccines. Peptide binding is the most selective step in identifying T-cell epitopes. In this paper, we present a new approach to predicting MHC-binding ligands that takes into account new weighting schemes for position-based amino acid frequencies, BLOSUM and VOGG substitution of amino acids, and the physicochemical and molecular properties of amino acids. We have made models for quantitatively and qualitatively predicting MHC-binding ligands. Our models are based on two machine learning methods support vector machine (SVM) and support vector regression (SVR), where our models have used for feature selection, several different encoding and weighting schemes for peptides. The resulting models showed comparable, and in some cases better, performance than the best existing predictors. The obtained results indicate that the physicochemical and molecular properties of amino acids (AA) contribute significantly to the peptide-binding affinity.",
publisher = "Elsevier Sci Ltd, Oxford",
journal = "Computational Biology and Chemistry",
title = "SVM and SVR-based MHC-binding prediction using a mathematical presentation of peptide sequences",
pages = "127-117",
volume = "65",
doi = "10.1016/j.compbiolchem.2016.10.011"
}
Jandrlić, D.. (2016). SVM and SVR-based MHC-binding prediction using a mathematical presentation of peptide sequences. in Computational Biology and Chemistry
Elsevier Sci Ltd, Oxford., 65, 117-127.
https://doi.org/10.1016/j.compbiolchem.2016.10.011
Jandrlić D. SVM and SVR-based MHC-binding prediction using a mathematical presentation of peptide sequences. in Computational Biology and Chemistry. 2016;65:117-127.
doi:10.1016/j.compbiolchem.2016.10.011 .
Jandrlić, Davorka, "SVM and SVR-based MHC-binding prediction using a mathematical presentation of peptide sequences" in Computational Biology and Chemistry, 65 (2016):117-127,
https://doi.org/10.1016/j.compbiolchem.2016.10.011 . .
7
2
9