The direct application of statistics to stochastic optimization based on iterated density estimation has become more important and present in evolutionary computation over the Last few years. The estimation of densities over selected samples and the sampling from the resulting distributions, is a combination of the recombination and mutation steps used in evolutionary algorithms. We introduce the framework named IDEA to formalize this notion. By combining continuous probability theory with techniques from existing algorithms, this framework allows us to define new continuous evolutionary optimization algorithms
While the design of algorithms is traditionally a discrete endeavour, in recent years many advances ...
This paper summaries our recent work on combining estimation of distribution algorithms (EDA) and ot...
Estimation of distribution algorithms (EDA) are a major branch of evolutionary algorithms (EA) with ...
In this paper, we formalize the notion of performing optimization by iterated density estimation evo...
For continuous optimization problems, evolutionary algorithms (EAs) that build and use probabilistic...
The IDEA framework is a general framework for iterated density estimation evolutionary algorithms. T...
This chapter serves as an introduction to estimation of distribution algorithms (EDAs). Estimation o...
Evolutionary computation is a field which uses natural computational processes to optimize mathemati...
Research into the dynamics of Genetic Algorithms (GAs) has led to the ¯eld of Estimation{of{Distribu...
Solving permutation optimization problems is an important and open research question. Using continuo...
Evolutionary algorithms are optimization techniques inspired by the actual evolution of biological s...
Evolutionary algorithms perform optimization using a population of sample solution points. An intere...
Slides of a talk given at Dortmund University, Dept. of Statistics, on March 2015 the 11th. Invitati...
Research into the dynamics of Genetic Algorithms (GAs) has led to the field of Estimation-of-Distrib...
Abstract: This paper summaries our recent work on combining estimation of distribution algorithms (E...
While the design of algorithms is traditionally a discrete endeavour, in recent years many advances ...
This paper summaries our recent work on combining estimation of distribution algorithms (EDA) and ot...
Estimation of distribution algorithms (EDA) are a major branch of evolutionary algorithms (EA) with ...
In this paper, we formalize the notion of performing optimization by iterated density estimation evo...
For continuous optimization problems, evolutionary algorithms (EAs) that build and use probabilistic...
The IDEA framework is a general framework for iterated density estimation evolutionary algorithms. T...
This chapter serves as an introduction to estimation of distribution algorithms (EDAs). Estimation o...
Evolutionary computation is a field which uses natural computational processes to optimize mathemati...
Research into the dynamics of Genetic Algorithms (GAs) has led to the ¯eld of Estimation{of{Distribu...
Solving permutation optimization problems is an important and open research question. Using continuo...
Evolutionary algorithms are optimization techniques inspired by the actual evolution of biological s...
Evolutionary algorithms perform optimization using a population of sample solution points. An intere...
Slides of a talk given at Dortmund University, Dept. of Statistics, on March 2015 the 11th. Invitati...
Research into the dynamics of Genetic Algorithms (GAs) has led to the field of Estimation-of-Distrib...
Abstract: This paper summaries our recent work on combining estimation of distribution algorithms (E...
While the design of algorithms is traditionally a discrete endeavour, in recent years many advances ...
This paper summaries our recent work on combining estimation of distribution algorithms (EDA) and ot...
Estimation of distribution algorithms (EDA) are a major branch of evolutionary algorithms (EA) with ...