DocumentCode
356943
Title
Convergence properties of incremental Bayesian evolutionary algorithms with single Markov chains
Author
Zhang, Byoung-Tak ; Paass, Gerhard ; Muhlenbein, Heinz
Author_Institution
Artificial Intelligence Lab., Seoul Nat. Univ., South Korea
Volume
2
fYear
2000
fDate
2000
Firstpage
938
Abstract
Bayesian evolutionary algorithms (BEAs) are a probabilistic model of evolutionary computation for learning and optimization. Starting from a population of individuals drawn from a prior distribution, a Bayesian evolutionary algorithm iteratively generates a new population by estimating the posterior fitness distribution of parent individuals and then sampling from the distribution offspring individuals by variation and selection operators. Due to the non-homogeneity of their Markov chains, the convergence properties of the full BEAs are difficult to analyze. However, recent developments in Markov chain analysis for dynamic Monte Carlo methods provide a useful tool for studying asymptotic behaviors of adaptive Markov chain Monte Carlo methods including evolutionary algorithms. We apply these results to Investigate the convergence properties of Bayesian evolutionary algorithms with incremental data growth. We study the case of BEAs that generate single chains or have populations of size one. It is shown that under regularity conditions the incremental BEA asymptotically converges to a maximum a posteriori (MAP) estimate which is concentrated around the maximum likelihood estimate. This result relies on the observation that increasing the number of data items has an equivalent effect of reducing the temperature in simulated annealing
Keywords
Bayes methods; Markov processes; Monte Carlo methods; convergence of numerical methods; evolutionary computation; learning (artificial intelligence); optimisation; adaptive Markov chain Monte Carlo methods; asymptotic behavior; convergence properties; dynamic Monte Carlo methods; evolutionary computation; incremental Bayesian evolutionary algorithms; incremental data growth; learning; maximum a posteriori estimate; maximum likelihood estimate; new population generation; offspring individuals; optimization; parent individuals; posterior fitness distribution; probabilistic model; regularity conditions; selection operators; simulated annealing; single Markov chains; variation operators; Algorithm design and analysis; Bayesian methods; Computational modeling; Convergence; Electronic mail; Evolutionary computation; Information technology; Maximum likelihood estimation; Sampling methods; Simulated annealing;
fLanguage
English
Publisher
ieee
Conference_Titel
Evolutionary Computation, 2000. Proceedings of the 2000 Congress on
Conference_Location
La Jolla, CA
Print_ISBN
0-7803-6375-2
Type
conf
DOI
10.1109/CEC.2000.870744
Filename
870744
Link To Document