World's Best Scientists 2026 revealed!
Yaroslav D. Sergeyev

Yaroslav D. Sergeyev

D-Index & Metrics

Computer Science

D-Index
51
Citations
6918
World Ranking
5442
National Ranking
118

Mathematics

D-Index
54
Citations
7501
World Ranking
863
National Ranking
22

Overview

Yaroslav D. Sergeyev is affiliated with the University of Calabria in Italy. Their research spans multiple fields including Mathematics, Computer Science, and Engineering, with a total publication count distributed principally across these areas. Within these fields, their work concentrates on subfields such as Computational Theory and Mathematics, Mathematical Physics, Numerical Analysis, Control and Systems Engineering, and Computational Mechanics.

The scientist's main topics of research include Numerical Methods and Algorithms, Mathematical and Theoretical Analysis, Advanced Optimization Algorithms Research, Computability, Logic, AI Algorithms, Iterative Methods for Nonlinear Equations, Advanced Numerical Analysis Techniques, and the History and Theory of Mathematics.

Among their recent papers are:

  • Solving the Lexicographic Multi-Objective Mixed-Integer Linear Programming Problem using branch-and-bound and grossone methodology, 2020, Communications in Nonlinear Science and Numerical Simulation
  • Novel local tuning techniques for speeding up one-dimensional algorithms in expensive global optimization using Lipschitz derivatives, 2020, Journal of Computational and Applied Mathematics
  • Computation of higher order Lie derivatives on the Infinity Computer, 2020, Journal of Computational and Applied Mathematics
  • Representation of grossone-based arithmetic in simulink for scientific computing, 2020, Soft Computing
  • Iterative Grossone-Based Computation of Negative Curvature Directions in Large-Scale Optimization, 2020, Journal of Optimization Theory and Applications

Frequent co-authors associated with this scientist include Marat S. Mukhametzhanov, Dmitri E. Kvasov, Alberto Falcone, Alfredo Garro, and Maria Chiara Nasso.

Frequent publication venues where their work appears feature:

  • AIP conference proceedings
  • Soft Computing
  • Journal of Global Optimization
  • Journal of Computational and Applied Mathematics
  • Communications in Nonlinear Science and Numerical Simulation

Yaroslav D. Sergeyev has also contributed to book publications mainly through Springer Science+Business Media and Springer Nature. Two books published with Springer Science+Business Media are titled Numerical Computations: Theory and Algorithms (2020), with citation counts recorded as 32 and 4 for two editions respectively. Another book, Recent Trends in Mathematical Modeling and High Performance Computing, was published by Springer Nature in 2021.

Best Publications

  • Global Optimization with Non-Convex Constraints: Sequential and Parallel Algorithms

    R. G. Strongin;Yaroslav D. Sergeyev

  • Algorithm 829: Software for generation of classes of test functions with known local and global minima for global optimization

    Marco Gaviano;Dmitri E. Kvasov;Daniela Lera;Yaroslav D. Sergeyev

  • Introduction to Global Optimization Exploiting Space-Filling Curves

    Yaroslav D. Sergeyev;Roman G. Strongin;Daniela Lera

  • Global Search Based on Efficient Diagonal Partitions and a Set of Lipschitz Constants

    Yaroslav D. Sergeyev;Dmitri E. Kvasov

  • On the efficiency of nature-inspired metaheuristics in expensive global optimization with limited budget.

    Ya. D. Sergeyev;D. E. Kvasov;M. S. Mukhametzhanov

  • Numerical infinities and infinitesimals: Methodology, applications, and repercussions on two Hilbert problems

    Yaroslav D. Sergeyev

  • Globally-biased Disimpl algorithm for expensive global optimization

    Remigijus Paulavičius;Yaroslav D. Sergeyev;Dmitri E. Kvasov;Julius Žilinskas

  • Global optimization with non-convex constraints

    Roman G. Strongin;Yaroslav D. Sergeyev

  • An Information Global Optimization Algorithm with Local Tuning

    Yaroslav D. Sergeyev

  • A New Applied Approach for Executing Computations with Infinite and Infinitesimal Quantities

    Yaroslav D. Sergeyev

  • Numerical point of view on Calculus for functions assuming finite, infinite, and infinitesimal values over finite, infinite, and infinitesimal domains

    Yaroslav D. Sergeyev

  • Lipschitz and Hölder global optimization using space-filling curves

    D. Lera;Ya. D. Sergeyev

  • Deterministic Global Optimization

    Yaroslav D. Sergeyev;Dmitri E. Kvasov

  • Global one-dimensional optimization using smooth auxiliary functions

    Yaroslav D. Sergeyev

  • On the search of the shape parameter in radial basis functions using univariate global optimization methods

    R. Cavoretto;A. De Rossi;M. S. Mukhametzhanov;Ya. D. Sergeyev

  • Higher order numerical differentiation on the Infinity Computer

    Yaroslav D. Sergeyev

  • Acceleration of Univariate Global Optimization Algorithms Working with Lipschitz Functions and Lipschitz First Derivatives

    Daniela Lera;Yaroslav D. Sergeyev

  • Lexicographic multi-objective linear programming using Grossone methodology: Theory and algorithm

    Marco Cococcioni;Massimo Pappalardo;Yaroslav D. Sergeyev

  • Lipschitz gradients for global optimization in a one-point-based partitioning scheme

    Dmitri E. Kvasov;Yaroslav D. Sergeyev

  • Parallel Characteristical Algorithms for Solving Problems of GlobalOptimization

    Vladimir A. Grishagin;Yaroslav D. Sergeyev;Roman G. Strongin

  • A univariate global search working with a set of Lipschitz constants for the first derivative

    Dmitri E. Kvasov;Yaroslav D. Sergeyev

  • Software for Generation of Classes of Test Functions with Known Local and Global Minima for Global Optimization

    Marco Gaviano;Dmitri E. Kvasov;Daniela Lera;Yaroslav D. Sergeyev

Frequent Co-Authors

Masashi Hayakawa
Masashi Hayakawa University of Electro-Communications
Clara Pizzuti
Clara Pizzuti National Research Council (CNR)
Luigi Brugnano
Luigi Brugnano University of Florence
Pasquale Daponte
Pasquale Daponte University of Sannio
Selim G. Akl
Selim G. Akl Queen's University
Panos M. Pardalos
Panos M. Pardalos University of Florida
Cristian S. Calude
Cristian S. Calude University of Auckland
Susan Stepney
Susan Stepney University of York
Roberto Battiti
Roberto Battiti University of Trento
Andrew Adamatzky
Andrew Adamatzky University of the West of England

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