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TEC
2010

Analysis of Computational Time of Simple Estimation of Distribution Algorithms

12 years 11 months ago
Analysis of Computational Time of Simple Estimation of Distribution Algorithms
Estimation of distribution algorithms (EDAs) are widely used in stochastic optimization. Impressive experimental results have been reported in the literature. However, little work has been done on analyzing the computation time of EDAs in relation to the problem size. It is still unclear how well EDAs (with a finite population size larger than two) will scale up when the dimension of the optimization problem (problem size) goes up. This paper studies the computational time complexity of a simple EDA, i.e., the univariate marginal distribution algorithm (UMDA), in order to gain more insight into EDAs complexity. First, we discuss how to measure the computational time complexity of EDAs. A classification of problem hardness based on our discussions is then given. Second, we prove a theorem related to problem hardness and the probability conditions of EDAs. Third, we propose a novel approach to analyzing the computational time complexity of UMDA using discrete dynamic systems and Chernoff...
Tianshi Chen, Ke Tang, Guoliang Chen, Xin Yao
Added 22 May 2011
Updated 22 May 2011
Type Journal
Year 2010
Where TEC
Authors Tianshi Chen, Ke Tang, Guoliang Chen, Xin Yao
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