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Toward Comprehensible Software Fault Prediction Models Using Bayesian Network Classifiers

机译:使用贝叶斯网络分类器的综合软件故障预测模型

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摘要

Software testing is a crucial activity during software development and fault prediction models assist practitioners herein by providing an upfront identification of faulty software code by drawing upon the machine learning literature. While especially the Naive Bayes classifier is often applied in this regard, citing predictive performance and comprehensibility as its major strengths, a number of alternative Bayesian algorithms that boost the possibility of constructing simpler networks with fewer nodes and arcs remain unexplored. This study contributes to the literature by considering 15 different Bayesian Network (BN) classifiers and comparing them to other popular machine learning techniques. Furthermore, the applicability of the Markov blanket principle for feature selection, which is a natural extension to BN theory, is investigated. The results, both in terms of the AUC and the recently introduced H-measure, are rigorously tested using the statistical framework of Demšar. It is concluded that simple and comprehensible networks with less nodes can be constructed using BN classifiers other than the Naive Bayes classifier. Furthermore, it is found that the aspects of comprehensibility and predictive performance need to be balanced out, and also the development context is an item which should be taken into account during model selection.
机译:软件测试是软件开发期间的关键活动,并且故障预测模型通过利用机器学习文献来提供对故障软件代码的预先识别,从而帮助从业人员。尽管特别是朴素的贝叶斯分类器经常在这方面应用,以预测性能和可理解性为主要优势,但仍未探索许多可替代的贝叶斯算法,这些算法提高了构建具有更少节点和弧的更简单网络的可能性。通过考虑15种不同的贝叶斯网络(BN)分类器并将其与其他流行的机器学习技术进行比较,本研究为文献做出了贡献。此外,研究了马尔可夫毯式原理在特征选择方面的适用性,这是对BN理论的自然扩展。使用Demšar的统计框架,对AUC和最近推出的H-measure方面的结果均进行了严格测试。得出的结论是,可以使用除朴素贝叶斯分类器以外的BN分类器来构建具有较少节点的简单且可理解的网络。此外,发现需要在可理解性和预测性能方面进行权衡,并且开发上下文是在模型选择期间应考虑的项目。

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