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Latent Variable Model for Estimation of Distribution Algorithm Based on a Probabilistic Context-Free Grammar

机译:基于概率上下文无关文法的分布算法估计潜在变量模型

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摘要

Estimation of distribution algorithms are evolutionary algorithms using probabilistic techniques instead of traditional genetic operators. Recently, the application of probabilistic techniques to program and function evolution has received increasing attention, and this approach promises to provide a strong alternative to the traditional genetic programming techniques. Although a probabilistic context-free grammar (PCFG) is a widely used model for probabilistic program evolution, a conventional PCFG is not suitable for estimating interactions among nodes because of the context freedom assumption. In this paper, we have proposed a new evolutionary algorithm named programming with annotated grammar estimation based on a PCFG with latent annotations, which allows this context freedom assumption to be weakened. By applying the proposed algorithm to several computational problems, it is demonstrated that our approach is markedly more effective at estimating building blocks than prior approaches.
机译:分布算法的估计是使用概率技术而非传统遗传算子的进化算法。近来,概率技术在编程和功能进化中的应用越来越受到关注,这种方法有望为传统的遗传编程技术提供强有力的替代方法。尽管概率上下文无关文法(PCFG)是用于概率程序演化的广泛使用的模型,但由于上下文自由假设,常规PCFG不适合估计节点之间的交互。在本文中,我们提出了一种新的进化算法,即基于带有潜在注释的PCFG的带注释文法估计的编程算法,从而可以弱化此上下文自由性假设。通过将提出的算法应用于几个计算问题,证明了我们的方法在估计构件方面比现有方法明显更有效。

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