This paper proposes a multi-scale search algorithm for solving global optimization problems given a finite number of function evaluations. We refer to this algorithm as the Naive Multi …
This paper presents a new fractal search space decomposition-based algorithm to address the issue of scaling up the divide and conquer approach to deal with large scale problems …
DE Kvasov, YD Sergeyev - Encyclopedia of Optimization, 2023 - Springer
Global optimization problems are considered in which the objective functions and constraints can be expensive black-box multi-extremal functions satisfying the Lipschitz …
The complexity of Pareto fronts imposes a great challenge on the convergence analysis of multi-objective optimization methods. While most theoretical convergence studies have …
A Al-Dujaili, S Suresh - Proceedings of the AAAI Conference on …, 2017 - ojs.aaai.org
Random embedding has been applied with empirical success to large-scale black-box optimization problems with low effective dimensions. This paper proposes the …
An adaptation of the oscars algorithm for bound constrained global optimization is presented, and numerically tested. The algorithm is a stochastic direct search method, and …
In this paper, a new multi-objective optimization algorithm in a multi-scale framework with faster convergence characteristics is presented, referred to as the Pareto-Aware DIviding …
Stochastic adaptive Fourier decomposition (SAFD) is a recently developed sparse representation theory that combines the traditional signal decomposition method with …
This last decade the complexity of the problems increased with the increase of the CPUs' power and the decrease of memory costs. The appearance of clouds infrastructures provide …