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The Impact of Feature Selection Techniques on Software Defect Identification Models

机译:特征选择技术对软件缺陷识别模型的影响

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Defect identification is an important task for ensuring the quality of software. Recently, researchers have begun to utilize artificial intelligence techniques to improve the usability of static analysis tools by automatically identifying true defects from the reported SA alarms. Existing methods mainly focus on using the static code features to represent the defective code. However, a challenge that threatens the performance of these machine learning methods is the irrelevant and redundant features. Feature selection techniques can be applied to alleviate this problem. Since many feature selection methods have been proposed, this paper conducts a rigorous experimental evaluation on the impact of feature selection techniques for defect identification and explores whether there is a smallest ratio when using the feature selection techniques for building defect identification models with acceptable performance. Additionally, this paper proposes an effective feature selection approach based on the idea of majority voting, combing the output results of different feature selection techniques. The experimental results for five open-source projects show that there is a best ratio (20%) for feature selection which achieves satisfied performance with far fewer features used for defect identification. This finding can serve as a practical guideline for software defect identification.
机译:缺陷识别是确保软件质量的重要任务。最近,研究人员已经开始利用人工智能技术来通过自动识别报告的SA警报的真实缺陷来提高静态分析工具的可用性。现有方法主要专注于使用静态代码特征来表示有缺陷的代码。然而,威胁到这些机器学习方法性能的挑战是无关紧要和冗余的功能。特征选择技术可以应用来缓解这个问题。由于已经提出了许多特征选择方法,本文对特征选择技术对缺陷识别的影响进行了严格的实验评估,并且在使用具有可接受性能的特征选择技术时探讨了具有最小比率。此外,本文提出了一种基于多数投票思想的有效特征选择方法,梳理不同特征选择技术的输出结果。五个开源项目的实验结果表明,特征选择具有最佳比率(20%),其实现满意的性能,具有用于缺陷识别的较少的功能。此发现可以作为软件缺陷识别的实用指导。

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