基于序列比对和潜在语义索引的根本原因分析

R. Bose, U. Suresh
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引用次数: 10

摘要

软件故障的自动识别具有重要的现实意义。这需要描述程序执行行为。同样重要的是诊断(查找遇到的故障的根本原因)。在本文中,我们讨论了从导致失败的测试序列中识别失败的根本原因的问题。从生物序列比对和信息检索领域进行类比,我们提出了两种方法来寻找失败的根本原因。第一种方法是对齐所有与故障相关的测试序列,并识别这些序列中的公共模式。另一种方法是基于一种信息检索技术,即潜在语义索引(LSI)。我们的实验和分析表明,基于序列比对的方法在识别故障的根本原因方面有很大的帮助。基于LSI的方法根据测试序列的功能自动聚类,这有助于确定故障的不同表现形式。
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Root Cause Analysis Using Sequence Alignment and Latent Semantic Indexing
Automatic identification of software faults has enormous practical significance. This requires characterizing program execution behavior. Equally important is the aspect of diagnosing (finding root-cause of) faults encountered. In this article, we address the problem of identifying the root cause of failure from the test sequences that caused failure. Taking analogies from biological sequence alignment and information retrieval domains we propose two approaches for finding the root cause of failure. The first approach is to align all the test sequences pertaining to a fault and identifying the common pattern among these sequences. The other approach is based on an information retrieval technique viz., the latent semantic indexing (LSI). Our experiments and analysis showed that the sequence alignment based approach has the potential to aid significantly in identifying the root cause of failure. The LSI based approach automatically clusters the test sequences based on their functionality, which assists in determining the different manifestations of a fault.
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