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Trust-based fusion of classifiers for static code analysis

机译:基于信任的分类器融合,用于静态代码分析

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Static code analysis tools automatically generate alerts for potential software faults that can lead to failures. However, developers are usually exposed to a large number of alerts. Moreover, some of these alerts are subject to false positives and there is a lack of resources to inspect all the alerts manually. To address this problem, numerous approaches have been proposed for automatically ranking or classifying the alerts based on their likelihood of reporting a critical fault. One of the promising approaches is the application of machine learning techniques to classify alerts based on a set of artifact characteristics. The effectiveness of many different classifiers and artifact characteristics have been evaluated for this application domain. However, the effectiveness of classifier fusion methods have not been investigated yet. In this work, we evaluate several existing classifier fusion approaches in the context of an industrial case study to classify the alerts generated for a digital TV software. In addition, we employ a trust-based classifier fusion method. We observed that our approach can increase the accuracy of classification by up to 4%.
机译:静态代码分析工具会针对可能导致故障的潜在软件故障自动生成警报。但是,开发人员通常会遇到大量警报。而且,这些警报中的一些容易受到误报,并且缺乏手动检查所有警报的资源。为了解决这个问题,已经提出了许多方法来基于警报报告严重故障的可能性来自动对警报进行排名或分类。一种有前途的方法是应用机器学习技术基于一组工件特征对警报进行分类。已针对此应用程序领域评估了许多不同分类器和工件特征的有效性。但是,尚未研究分类器融合方法的有效性。在这项工作中,我们在工业案例研究的背景下评估了几种现有的分类器融合方法,以对为数字电视软件生成的警报进行分类。此外,我们采用了基于信任的分类器融合方法。我们观察到,我们的方法可以将分类的准确性提高多达4%。

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