Title of article :
Multi-objective optimization with diversity preserving mixture-based iterated density estimation evolutionary algorithms Original Research Article
Author/Authors :
Peter A.N. Bosman، نويسنده , , Dirk Thierens، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2002
Abstract :
Stochastic optimization by learning and using probabilistic models has received an increasing amount of attention over the last few years. Algorithms within this field estimate the probability distribution of a selection of the available solutions and subsequently draw more samples from the estimated probability distribution. The resulting algorithms have displayed a good performance on a wide variety of single-objective optimization problems, both for binary as well as for real-valued variables. Mixture distributions offer a powerful tool for modeling complicated dependencies between the problem variables. Moreover, they allow for elegant and parallel exploration of a multi-objective front. This parallel exploration aids the important preservation of diversity in multi-objective optimization. In this paper, we propose a new algorithm for evolutionary multi-objective optimization by learning and using probabilistic mixture distributions. We name this algorithm Multi-objective Mixture-based Iterated Density Estimation Evolutionary Algorithm (MIDEA). To further improve and maintain the diversity that is obtained by the mixture distribution, we use a specialized diversity preserving selection operator. We verify the effectiveness of our approach in two different problem domains and compare it with two other well-known efficient multi-objective evolutionary algorithms.
Keywords :
Multi-objective evolutionary algorithms , Probabilistic model learning , Numerical optimization , Combinatorial optimization
Journal title :
International Journal of Approximate Reasoning
Journal title :
International Journal of Approximate Reasoning