For the global optimization problems with continuous variables, evolutionary algorithms (EAs) are often used to find the approximate solutions. The number of generations for an EA to find the approximate solutions, called the first hitting time, is an important index to measure the performance of the EA. However, calculating the first hitting time is still difficult in theory. This paper proposes some new drift conditions that are used to estimate the upper bound of the first hitting times of EAs for finding the approximate solutions. Two case studies are given to show how to apply these conditions to estimate the first hitting times
In the past decades, many theoretical results related to the time complexity of evolutionary algorit...
Almost all analyses of time complexity of evolutionary algorithms (EAs) have been conducted for (1 +...
Although there are many evolutionary algorithms (EAs) for solving constrained optimization problems,...
For the global optimization problems with continuous variables, evolutionary algorithms (EAs) are of...
AbstractEvolutionary algorithms (EA) have been shown to be very effective in solving practical probl...
The expected first hitting time is an important issue in theoretical analyses of evolutionary algori...
The paper is devoted to upper bounds on run-time of Non-Elitist Genetic Algorithms until some target...
In spite of many applications of evolutionary algorithms in optimisation, theoretical results on the...
The paper is devoted to upper bounds on the expected first hitting times of the sets of local or glo...
The computational time complexity is an important topic in the theory of evolutionary algorithms (EA...
Linear functions, as a canonical model of unimodal problems, have been widely used in the theoretica...
International audienceThis paper explores the use of the standard approach for proving runtime bound...
AbstractThe computational time complexity is an important topic in the theory of evolutionary algori...
AbstractIn spite of many applications of evolutionary algorithms in optimisation, theoretical result...
Drift analysis is one of the state-of-the-art techniques for the runtime analysis of randomized sear...
In the past decades, many theoretical results related to the time complexity of evolutionary algorit...
Almost all analyses of time complexity of evolutionary algorithms (EAs) have been conducted for (1 +...
Although there are many evolutionary algorithms (EAs) for solving constrained optimization problems,...
For the global optimization problems with continuous variables, evolutionary algorithms (EAs) are of...
AbstractEvolutionary algorithms (EA) have been shown to be very effective in solving practical probl...
The expected first hitting time is an important issue in theoretical analyses of evolutionary algori...
The paper is devoted to upper bounds on run-time of Non-Elitist Genetic Algorithms until some target...
In spite of many applications of evolutionary algorithms in optimisation, theoretical results on the...
The paper is devoted to upper bounds on the expected first hitting times of the sets of local or glo...
The computational time complexity is an important topic in the theory of evolutionary algorithms (EA...
Linear functions, as a canonical model of unimodal problems, have been widely used in the theoretica...
International audienceThis paper explores the use of the standard approach for proving runtime bound...
AbstractThe computational time complexity is an important topic in the theory of evolutionary algori...
AbstractIn spite of many applications of evolutionary algorithms in optimisation, theoretical result...
Drift analysis is one of the state-of-the-art techniques for the runtime analysis of randomized sear...
In the past decades, many theoretical results related to the time complexity of evolutionary algorit...
Almost all analyses of time complexity of evolutionary algorithms (EAs) have been conducted for (1 +...
Although there are many evolutionary algorithms (EAs) for solving constrained optimization problems,...