The Targeted Estimation of Distribution Algorithm (TEDA) introduces into an EDA/GA hybrid framework a ‘Targeting’ process, whereby the number of active genes, or ‘control points’, in a solution is driven in an optimal direction. For larger feature selection problems with over a thousand features, traditional methods such as forward and backward selection are inefficient. Traditional EAs may perform better but are slow to optimize if a problem is sufficiently noisy that most large solutions are equally ineffective and it is only when much smaller solutions are discovered that effective optimization may begin. By using targeting, TEDA is able to drive down the feature set size quickly and so speeds up this process. Thi...
Continuous Estimation of Distribution Algorithms (EDAs) commonly use a Gaussian distribution to cont...
One of the major challenges in automatic classification is to deal with highly dimensional data. Sev...
The report contains a short survey of basic principles behind the evolutionary algorithms with speci...
Abstract — Estimation of distribution algorithm (EDA) is a new class of evolutionary algorithms with...
This paper describes the application of four evolutionary algorithms to the selection of feature s...
Genetic algorithms have been created as an optimization strategy to be used especially when complex ...
Evolutionary algorithms (EAs) are known in many areas as a powerful and robust optimization and sear...
This chapter serves as an introduction to estimation of distribution algorithms (EDAs). Estimation o...
Model-building optimisation methods aim to learn the structure underlying a problem and exploit this...
This paper summaries our recent work on combining estimation of distribution algorithms (EDA) and ot...
Abstract: This paper summaries our recent work on combining estimation of distribution algorithms (E...
As a commonly used technique in data preprocessing for machine learning, feature selection identifie...
Optimization is to find the ”best ” solution to a problem where the quality of a solution can be mea...
Multi-variate estimation of distribution algorithms (EDAs) build models via detecting interactions b...
Often, Estimation-of-Distribution Algorithms (EDAs) are praised for their ability to optimize a broa...
Continuous Estimation of Distribution Algorithms (EDAs) commonly use a Gaussian distribution to cont...
One of the major challenges in automatic classification is to deal with highly dimensional data. Sev...
The report contains a short survey of basic principles behind the evolutionary algorithms with speci...
Abstract — Estimation of distribution algorithm (EDA) is a new class of evolutionary algorithms with...
This paper describes the application of four evolutionary algorithms to the selection of feature s...
Genetic algorithms have been created as an optimization strategy to be used especially when complex ...
Evolutionary algorithms (EAs) are known in many areas as a powerful and robust optimization and sear...
This chapter serves as an introduction to estimation of distribution algorithms (EDAs). Estimation o...
Model-building optimisation methods aim to learn the structure underlying a problem and exploit this...
This paper summaries our recent work on combining estimation of distribution algorithms (EDA) and ot...
Abstract: This paper summaries our recent work on combining estimation of distribution algorithms (E...
As a commonly used technique in data preprocessing for machine learning, feature selection identifie...
Optimization is to find the ”best ” solution to a problem where the quality of a solution can be mea...
Multi-variate estimation of distribution algorithms (EDAs) build models via detecting interactions b...
Often, Estimation-of-Distribution Algorithms (EDAs) are praised for their ability to optimize a broa...
Continuous Estimation of Distribution Algorithms (EDAs) commonly use a Gaussian distribution to cont...
One of the major challenges in automatic classification is to deal with highly dimensional data. Sev...
The report contains a short survey of basic principles behind the evolutionary algorithms with speci...