多标签软件行为学习

Yang Feng, Zhenyu Chen
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引用次数: 14

摘要

软件行为学习是软件工程中的一项重要任务。软件行为通常表示为程序执行。我们期望类似的执行具有类似的行为,即揭示相同的错误。单标签学习已被用于为现有工作中的失败执行分配单个标签(错误)。但是,执行失败可能是由多个错误同时引起的。因此,它需要分配多个标签来支持实践中的软件工程任务。本文提出了一种多标签软件行为学习方法。介绍了一种著名的多标签学习算法ML-KNN,实现了对软件行为的全面学习。我们对flex和grep这两个工业程序进行了初步实验。实验结果表明,与单标签学习相比,多标签学习可以产生更精确、更完整的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-label software behavior learning
Software behavior learning is an important task in software engineering. Software behavior is usually represented as a program execution. It is expected that similar executions have similar behavior, i.e. revealing the same faults. Single-label learning has been used to assign a single label (fault) to a failing execution in the existing efforts. However, a failing execution may be caused by several faults simultaneously. Hence, it needs to assign multiple labels to support software engineering tasks in practice. In this paper, we present multi-label software behavior learning. A well-known multi-label learning algorithm ML-KNN is introduced to achieve comprehensive learning of software behavior. We conducted a preliminary experiment on two industrial programs: flex and grep. The experimental results show that multi-label learning can produce more precise and complete results than single-label learning.
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