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Learning bayesian network by genetic algorithm using structure-parameter restrictions

机译:利用结构参数约束的遗传算法学习贝叶斯网络

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In this paper, a novel Bayesian Network (BN) learning method is proposed, in which Genetic Algorithm (GA)and structure-parameter restrictions are combined to optimize the BN's structure and parameters simultaneously. We firstlytransferred the domain knowledge into structure and parameter restrictions, which can be considered ‘hard’ restrictions in the sense that they are assumed to be true forthe BN representing the domain of knowledge. In order to use these restrictions in conjunctionwith Genetic Algorithm for learning Bayesian networks, gene restrictions table is designed to kick out the unsatisfied candidate genes, so that more accurate results and less convergence times can be achieved. Experiments show that the proposedalgorithm can contribute to the global optimum of the system, and can improve the value of the evaluation function more than 15% while keeping the same detection rate.
机译:提出了一种新颖的贝叶斯网络学习方法,该方法结合遗传算法和结构参数限制来同时优化贝叶斯网络的结构和参数。首先,我们将领域知识转换为结构和参数限制,在假设它们代表代表知识领域的BN是正确的意义上,可以将这些限制视为“硬”限制。为了将这些限制与遗传算法结合使用以学习贝叶斯网络,设计了基因限制表来剔除未满足的候选基因,从而可以获得更准确的结果和更少的收敛时间。实验表明,所提出的算法可以对系统的全局最优做出贡献,并且在保持相同检测率的同时,可以将评估函数的值提高15%以上。

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