Combining Probabilistic Ranking and Latent Semantic Indexing for Feature Identification

D. Poshyvanyk, Andrian Marcus, V. Rajlich, Yann-Gaël Guéhéneuc, G. Antoniol
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引用次数: 137

Abstract

The paper recasts the problem of feature location in source code as a decision-making problem in the presence of uncertainty. The main contribution consists in the combination of two existing techniques for feature location in source code. Both techniques provide a set of ranked facts from the software, as result to the feature identification problem. One of the techniques is based on a scenario based probabilistic ranking of events observed while executing a program under given scenarios. The other technique is defined as an information retrieval task, based on the latent semantic indexing of the source code. We show the viability and effectiveness of the combined technique with two case studies. A first case study is a replication of feature identification in Mozilla, which allows us to directly compare the results with previously published data. The other case study is a bug location problem in Mozilla. The results show that the combined technique improves feature identification significantly with respect to each technique used independently
结合概率排序和潜在语义索引的特征识别
本文将源代码中的特征定位问题重新定义为存在不确定性的决策问题。它的主要贡献在于结合了两种现有的用于在源代码中定位特性的技术。这两种技术都提供了一组来自软件的排序事实,从而解决了特征识别问题。其中一种技术是基于在给定场景下执行程序时观察到的事件的基于场景的概率排序。另一种技术定义为基于源代码的潜在语义索引的信息检索任务。我们通过两个案例研究展示了该组合技术的可行性和有效性。第一个案例研究是在Mozilla中复制特性识别,它允许我们直接将结果与之前发布的数据进行比较。另一个案例研究是Mozilla中的bug定位问题。结果表明,相对于单独使用的技术,组合技术显著提高了特征识别
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