Title of article
Unified eigen analysis on multivariate Gaussian based estimation of distribution algorithms
Author/Authors
Weishan Dong، نويسنده , , Xin Yao، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2008
Pages
24
From page
3000
To page
3023
Abstract
Multivariate Gaussian models are widely adopted in continuous estimation of distribution algorithms (EDAs), and covariance matrix plays the essential role in guiding the evolution. In this paper, we propose a new framework for multivariate Gaussian based EDAs (MGEDAs), named eigen decomposition EDA (ED-EDA). Unlike classical EDAs, ED-EDA focuses on eigen analysis of the covariance matrix, and it explicitly tunes the eigenvalues. All existing MGEDAs can be unified within our ED-EDA framework by applying three different eigenvalue tuning strategies. The effects of eigenvalue on influencing the evolution are investigated through combining maximum likelihood estimates of Gaussian model with each of the eigenvalue tuning strategies in ED-EDA. In our experiments, proper eigenvalue tunings show high efficiency in solving problems with small population sizes, which are difficult for classical MGEDA adopting maximum likelihood estimates alone. Previously developed covariance matrix repairing (CMR) methods focusing on repairing computational errors of covariance matrix can be seen as a special eigenvalue tuning strategy. By using the ED-EDA framework, the computational time of CMR methods can be reduced from cubic to linear. Two new efficient CMR methods are proposed. Through explicitly tuning eigenvalues, ED-EDA provides a new approach to develop more efficient Gaussian based EDAs.
Keywords
Multivariate Gaussian distribution , eigen analysis , Covariance matrix scaling , Eigenvalue tuning , Estimation of distribution algorithm
Journal title
Information Sciences
Serial Year
2008
Journal title
Information Sciences
Record number
1213359
Link To Document