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Improved algorithm based on mutual information for learning Bayesian network structures in the space of equivalence classes

机译:等效类空间中基于互信息的贝叶斯网络结构改进算法

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As is well known, greedy algorithm is usually used as local optimization method in many heuristic algorithms such as ant colony optimization, taboo search, and genetic algorithms, and it is significant to increase the convergence speed and learning accuracy of greedy search in the space of equivalence classes of Bayesian network structures. An improved algorithm, I-GREEDY-E is presented based on mutual information and conditional independence tests to firstly make a draft about the real network, and then greedily explore the optimal structure in the space of equivalence classes starting from the draft. Numerical experiments show that both the BIC score and structure error have some improvement, and the number of iterations and running time are greatly reduced. Therefore the structure with highest degree of data matching can be relatively faster determined by the improved algorithm.
机译:众所周知,贪婪算法通常在许多启发式算法中用作局部优化方法,例如蚁群优化,禁忌搜索和遗传算法,对于提高贪婪搜索在空间中的收敛速度和学习准确性具有重要意义。贝叶斯网络结构的等价类。在互信息和条件独立性测试的基础上,提出了一种改进的算法I-GREEDY-E,该算法首先编写了一个关于真实网络的草图,然后从该草图开始贪婪地探索了等价类空间中的最优结构。数值实验表明,BIC得分和结构误差都有一定的提高,迭代次数和运行时间大大减少。因此,通过改进的算法,可以相对更快地确定具有最高数据匹配度的结构。

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