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Optimal Feature Selection for Decision Robustness in Bayesian Networks

机译:贝叶斯网络中决策鲁棒性的最佳特征选择

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In many applications, one can define a large set of features to support the classification task at hand. At test time, however, these become prohibitively expensive to evaluate, and only a small subset of features is used, often selected for their information-theoretic value. For threshold-based, Naive Bayes classifiers, recent work has suggested selecting features that maximize the expected robustness of the classifier, that is, the expected probability it maintains its decision after seeing more features. We propose the first algorithm to compute this expected same-decision probability for general Bayesian network classifiers, based on compiling the network into a tractable circuit representation. Moreover, we develop a search algorithm for optimal feature selection that utilizes efficient incremental circuit modifications. Experiments on Naive Bayes, as well as more general networks, show the efficacy and distinct behavior of this decision-making approach.
机译:在许多应用中,人们可以定义大量的功能以支持手头的分类任务。然而,在测试时间,这些对评估的昂贵昂贵,并且仅使用小的特征子集,通常为其信息理论值选择。对于基于阈值的,Naive Bayes分类器,最近的工作已经建议选择最大化分类器的预期稳健性的功能,即在看到更多功能后保持其决定的预期概率。我们提出了第一种算法,用于计算普通贝叶斯网络分类器的这种预期的相同决策概率,基于将网络编译为易诊电路表示。此外,我们开发了一种用于最佳特征选择的搜索算法,其利用有效的增量电路修改。朴素贝叶斯的实验,以及更多的通用网络,表明了这种决策方法的功效和不同行为。

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