Many optimization tasks have to be handled in noisy environments, where we cannot obtain the exact evaluation of a solution but only a noisy one. For noisy optimization tasks, evolutionary algorithms (EAs), a kind of stochastic metaheuristic search algorithm, have been widely and successfully applied. Previous work mainly focuses on empirical studying and designing EAs for noisy optimization, while, the theoretical counterpart has been little investigated. In this paper, we investigate a largely ignored question, i.e., whether an optimization problem will always become harder for EAs in a noisy envi-ronment. We prove that the answer is negative, with respect to the measurement of the expected running time. The result implies that, for optim...
Noisy multi-objective optimization problem Values of objective functions are uncertain Techniques fo...
Many real-world optimization problems occur in environments that change dynamically or involve stoch...
The presence of noise in real-world optimization problems poses difficulties to optimization strateg...
Many optimization tasks must be handled in noisy environments, where the exact evaluation of a solut...
Evolution strategies are general, nature-inspired heuristics for search and optimization. Supported ...
Most real-world optimization problems behave stochastically. Evolutionary optimization algorithms ha...
Most real-world optimization problems behave stochastically. Evolutionary optimization algorithms ha...
Sampling has been often employed by evolutionary algorithms to cope with noise when solving noisy re...
Practical optimization problems often suffer from noise. Potential sources of noise include measurem...
International audienceIn Noisy Optimization, one of the most common way to deal with noise is throug...
International audienceIn Noisy Optimization, one of the most common way to deal with noise is throug...
Abstract. Genetic algorithms are adaptive search techniques which have been used to learn high-perfo...
International audienceIn spite of various recent publications on the subject, there are still gaps b...
International audienceIn spite of various recent publications on the subject, there are still gaps b...
Genetic Algorithms (GA) have been widely used in the areas of searching, function optimization, and ...
Noisy multi-objective optimization problem Values of objective functions are uncertain Techniques fo...
Many real-world optimization problems occur in environments that change dynamically or involve stoch...
The presence of noise in real-world optimization problems poses difficulties to optimization strateg...
Many optimization tasks must be handled in noisy environments, where the exact evaluation of a solut...
Evolution strategies are general, nature-inspired heuristics for search and optimization. Supported ...
Most real-world optimization problems behave stochastically. Evolutionary optimization algorithms ha...
Most real-world optimization problems behave stochastically. Evolutionary optimization algorithms ha...
Sampling has been often employed by evolutionary algorithms to cope with noise when solving noisy re...
Practical optimization problems often suffer from noise. Potential sources of noise include measurem...
International audienceIn Noisy Optimization, one of the most common way to deal with noise is throug...
International audienceIn Noisy Optimization, one of the most common way to deal with noise is throug...
Abstract. Genetic algorithms are adaptive search techniques which have been used to learn high-perfo...
International audienceIn spite of various recent publications on the subject, there are still gaps b...
International audienceIn spite of various recent publications on the subject, there are still gaps b...
Genetic Algorithms (GA) have been widely used in the areas of searching, function optimization, and ...
Noisy multi-objective optimization problem Values of objective functions are uncertain Techniques fo...
Many real-world optimization problems occur in environments that change dynamically or involve stoch...
The presence of noise in real-world optimization problems poses difficulties to optimization strateg...