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Learning Robust Bayesian Network Classifiers in the Space of Markov Equivalent Classes

机译:在马尔可夫等价类别的空间中学习强大的贝叶斯网络分类器

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Restricted Bayesian network is an efficient classification model. However, so far some researchers still attempt to improve the performance by considering directions of edges, because traditional learning method merely takes into account log likelihood, which is not suitable for learning classifiers, when learning a tree topological structure. In this paper, we analyze the search spaces and the equivalent classes spaces of this kind of classifiers. Accordingly, we point out they are robust on structure learning because that the directions of their edges do not play a role in maximizing log conditional likelihood. For application, we propose a novel framework for learning these kind of classifiers. Finally, we run experiments on Weka platform using 45 problems from the University of California at Irvine repository. Experimental results show classification accuracy and stability do not change statistically in our learning framework.
机译:限制贝叶斯网络是一个有效的分类模型。然而,到目前为止,一些研究人员仍然试图通过考虑边缘的指示来提高性能,因为传统的学习方法仅考虑到日志似然,这在学习树拓扑结构时不适合学习分类器。在本文中,我们分析了这种分类器的搜索空间和等同类空间。因此,我们指出它们对结构学习具有稳健性,因为它们的边缘的方向在最大化日志条件可能性方面不会发挥作用。对于申请,我们提出了一种学习这些分类器的新框架。最后,我们在Irvine Repository中使用了加州大学的45个问题进行了Weka平台的实验。实验结果表明分类准确性和稳定性在我们的学习框架中不会统计变化。

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