探索故障定位的机器学习技术

Luciano C. Ascari, L. Y. Araki, A. Pozo, S. Vergilio
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引用次数: 27

摘要

调试是与测试活动相关的最重要的任务。它的目标是在测试过程中发生故障后定位和消除故障。然而,这不是一项微不足道的任务,通常需要耗费精力和时间。调试技术通常使用测试信息,但它们通常是针对特定领域、语言和开发范例的。正因为如此,神经网络(NN)的方法已经研究了这个目标。它独立于上下文,并为过程代码提供了有希望的结果。然而,它并没有在面向对象(OO)应用程序的上下文中得到验证。除此之外,其他机器学习技术的使用也很有趣,因为它们可以更高效。考虑到这一点,目前的工作将神经网络方法适应于面向对象上下文,并探索了支持向量机(svm)的使用。本文介绍并分析了使用这两种技术的结果。它们表明,使用它们有助于简化故障定位任务。
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Exploring machine learning techniques for fault localization
Debugging is the most important task related to the testing activity. It has the goal of locating and removing a fault after a failure occurred during test. However, it is not a trivial task and generally consumes effort and time. Debugging techniques generally use testing information but usually they are very specific for certain domains, languages and development paradigms. Because of this, a Neural Network (NN) approach has been investigated with this goal. It is independent of the context and presented promising results for procedural code. However it was not validated in the context of Object-Oriented (OO) applications. In addition to this, the use of other Machine Learning techniques is also interesting, because they can be more efficient. With this in mind, the present work adapts the NN approach to the OO context and also explores the use of Support Vector Machines (SVMs). Results from the use of both techniques are presented and analysed. They show that their use contributes for easing the fault localization task.
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