Automatic Detection and Removal of Conformance Faults in Feature Models

Paolo Arcaini, A. Gargantini, Paolo Vavassori
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引用次数: 12

Abstract

Building a feature model for an existing SPL can improve the automatic analysis of the SPL and reduce the effort in maintenance. However, developing a feature model can be error prone, and checking that it correctly identifies each actual product of the SPL may be unfeasible due to the huge number of possible configurations. We apply mutation analysis and propose a method to detect and remove conformance faults by selecting special configurations that distinguish a feature model from its mutants. We propose a technique that, by iterating this process, is able to repair a faulty model. We devise several variations of a simple hill climbing algorithm for automatic fault removal and we compare them by a series of experiments on three different sets of feature models. We find that our technique is able to improve the conformance of around 90% of the models and find the correct model in around 40% of the cases.
特征模型中一致性错误的自动检测与去除
为已有的SPL建立特征模型可以提高SPL的自动分析,减少维护工作量。然而,开发特征模型可能容易出错,并且由于可能的配置数量巨大,检查它是否正确识别SPL的每个实际产品可能是不可实现的。我们应用突变分析,提出了一种通过选择特殊配置来区分特征模型及其突变体来检测和去除一致性故障的方法。我们提出了一种技术,通过迭代这个过程,可以修复有缺陷的模型。我们设计了一种简单的爬坡算法的几种变体,用于自动故障清除,并在三组不同的特征模型上进行了一系列实验。我们发现,我们的技术能够提高约90%模型的一致性,并在约40%的情况下找到正确的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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