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Continuous estimation of distribution algorithms with probabilistic principal component analysis

机译:用概率主成分分析法连续估计分布算法

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Many evolutionary algorithms have been studied to build and use a probability distribution model of the population for optimization problems. Most of these methods tried to represent explicitly the relationship between variables in the problem with factorization techniques or a graphical model such as Bayesian or Gaussian networks. Thus enormous computational cost is required for constructing those models when the problem size is large. We propose a new estimation of distribution algorithm by using probabilistic principal component analysis (PPCA) which can explain the high order interactions with the latent variables. Since there are no explicit search procedures for the probability density structure, it is possible to rapidly estimate the distribution and readily sample the new individuals from it. Our experimental results support that the presented estimation of distribution algorithms with PPCA can find good solutions more efficiently than other EDAs for the continuous spaces.
机译:已经研究了许多进化算法来建立和使用种群的概率分布模型来解决优化问题。这些方法中的大多数试图通过分解技术或诸如贝叶斯网络或高斯网络的图形模型来明确表示问题中变量之间的关系。因此,当问题规模很大时,构建那些模型需要巨大的计算成本。我们使用概率主成分分析(PPCA)提出了一种新的分布算法估计方法,该方法可以解释与潜在变量的高阶相互作用。由于没有针对概率密度结构的明确搜索程序,因此可以快速估计分布并从中轻松采样新个体。我们的实验结果表明,对于连续空间,使用PPCA提出的分布算法估计可以比其他EDA更加有效地找到良好的解决方案。

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