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Improved sampling using loopy belief propagation for probabilistic model building genetic programming

机译:使用循环置信传播的改进采样用于概率模型构建遗传规划

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摘要

In recent years, probabilistic model building genetic programming (PMBGP) for program optimization has attracted considerable interest. PMBGPs generally use probabilistic logic sampling (PLS) to generate new individuals. However, the generation of the most probable solutions (MPSs), i.e., solutions with the highest probability, is not guaranteed. In the present paper, we introduce loopy belief propagation (LBP) for PMBGPs to generate MPSs during the sampling process. We selected program optimization with linkage estimation (POLE) as the foundation of our approach and we refer to our proposed method as POLE-BP. We apply POLE-BP and existing methods to three benchmark problems to investigate the effectiveness of LBP in the context of PMBGPs, and we describe detailed examinations of the behaviors of LBP. We find that POLE-BP shows better search performance with some problems because LBP boosts the generation of building blocks.
机译:近年来,用于程序优化的概率模型构建遗传程序(PMBGP)引起了人们的极大兴趣。 PMBGP通常使用概率逻辑采样(PLS)生成新个体。但是,不能保证产生最可能的解决方案(MPS),即具有最高可能性的解决方案。在本文中,我们引入了PMBGP的循环置信传播(LBP),以在采样过程中生成MPS。我们选择具有链接估计(POLE)的程序优化作为我们方法的基础,并将我们提出的方法称为POLE-BP。我们将POLE-BP和现有方法应用于三个基准问题,以研究LBP在PMBGP上下文中的有效性,并描述了LBP行为的详细检查。我们发现POLE-BP表现出更好的搜索性能,但存在一些问题,因为LBP促进了构建基块的生成。

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