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Effective Structure Learning for Estimation of Distribution Algorithms via L1-Regularized Bayesian Networks

机译:通过L1规则贝叶斯网络估计分布算法的有效结构学习

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Estimation of distribution algorithms (EDAs), as an extension of genetic algorithms, samples new solutions from the probabilistic model, which characterizes the distribution of promising solutions in the search space at each generation. This paper introduces and evaluates a novel estimation of a distribution algorithm, called L1-regularized Bayesian optimization algorithm, L1BOA. In L1BOA, Bayesian networks as probabilistic models are learned in two steps. First, candidate parents of each variable in Bayesian networks are detected by means of L1-regularized logistic regression, with the aim of leading a sparse but nearly optimized network structure. Second, the greedy search, which is restricted to the candidate parent-child pairs, is deployed to identify the final structure. Compared with the Bayesian optimization algorithm (BOA), L1BOA improves the efficiency of structure learning due to the reduction and automated control of network complexity introduced with L1-regularized learning. Experimental studi...
机译:分布算法(EDA)的估计是遗传算法的扩展,它从概率模型中采样新的解决方案,该模型表征了每一代搜索空间中有希望的解决方案的分布。本文介绍并评估了一种新的分配算法估计,称为L1规则贝叶斯优化算法L1BOA。在L1BOA中,分两步学习贝叶斯网络作为概率模型。首先,通过L1正则化logistic回归检测贝叶斯网络中每个变量的候选父代,目的是导致稀疏但几乎优化的网络结构。第二,部署仅限于候选父子对的贪婪搜索以识别最终结构。与贝叶斯优化算法(BOA)相比,L1BOA通过减少和自动控制L1标准化学习引入的网络复杂性,提高了结构学习的效率。实验研究

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