• Documents
  • Authors
  • Tables
  • Other Seers ▼
    RefSeer AckSeer CollabSeer SeerSeer
  • Log in
  • Sign up
  • MetaCart

CiteSeerX logo

Advanced Search Include Citations
Advanced Search Include Citations | Disambiguate

Convergence of estimation of distribution algorithms for finite samples. Technical report, Fraunhofer Institut Autonomous intelligent Systems, Sankt Augustin (2008)

by H Mühlenbein
Venue:35 Mühlenbein, H., Mahnig, T.: Convergence theory and applications of the
Add To MetaCart

Tools

Sorted by:
Results 1 - 3 of 3

An introduction and survey of estimation of distribution algorithms

by Mark Hauschild, Martin Pelikan - SWARM AND EVOLUTIONARY COMPUTATION , 2011
"... ..."
Abstract - Cited by 4 (4 self) - Add to MetaCart
Abstract not found

Model Accuracy in the Bayesian Optimization Algorithm

by Claudio F. Lima, O G. Lobo, Martin Pelikan, David E. Goldberg, Claudio F. Lima, O G. Lobo, Martin Pelikan, David E. Goldberg , 2010
"... Evolutionary algorithms (EAs) are particularly suited to solve problems for which there is not much information available. From this standpoint, estimation of distribution algorithms (EDAs), which guide the search by using probabilistic models of the population, have brought a new view to evolutiona ..."
Abstract - Cited by 3 (3 self) - Add to MetaCart
Evolutionary algorithms (EAs) are particularly suited to solve problems for which there is not much information available. From this standpoint, estimation of distribution algorithms (EDAs), which guide the search by using probabilistic models of the population, have brought a new view to evolutionary computation. While solving a given problem with an EDA, the user has access to a set of models that reveal probabilistic dependencies between variables, an important source of information about the problem. However, as the complexity of the used models increases, the chance of overfitting and consequently reducing model interpretability, increases as well. This paper investigates the relationship between the probabilistic models learned by the Bayesian optimization algorithm (BOA) and the underlying problem structure. The purpose of the paper is threefold. First, model building in BOA is analyzed to understand how the problem structure is learned. Second, it is shown how the selection operator can lead to model overfitting in Bayesian EDAs. Third, the scoring metric that guides the search for an adequate model structure is modified to take into account the non-uniform distribution of the mating pool generated by tournament selection. Overall, this paper makes a contribution towards

F.G.: Introduction to estimation of distribution algorithms

by Martin Pelikan, Mark W. Hauschild, O G. Lobo , 2012
"... ..."
Abstract - Cited by 1 (1 self) - Add to MetaCart
Abstract not found
The National Science Foundation
  • About CiteSeerX
  • Submit Documents
  • Privacy Policy
  • Help
  • Data
  • Source
  • Contact Us

Developed at and hosted by The College of Information Sciences and Technology

© 2007-2010 The Pennsylvania State University