跟踪正常化

Madeline Diep, Sebastian G. Elbaum, Matthew B. Dwyer
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引用次数: 9

摘要

识别真正不同的跟踪对于许多动态分析活动的性能是至关重要的。例如,给定一组与程序故障相关的跟踪,识别唯一跟踪的子集可以通过产生较小的候选故障位置集来减少调试工作。然而,标识唯一跟踪的过程受制于跟踪事件序列中不相关的变化的存在,这可能使跟踪看起来是唯一的,而实际上不是。在本文中,我们提出了一种方法来减少无关紧要和潜在有害的微量变化。该方法将轨迹分解为片段,在这些片段上可以识别由事件顺序或重复引起的不相关变化,然后用于规范化池中的轨迹。通过复制最初评估的条件,在两个著名的客户端动态分析中对该方法进行了研究,揭示了客户端可以使用规范化跟踪提供更精确的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Trace Normalization
Identifying truly distinct traces is crucial for the performance of many dynamic analysis activities. For example, given a set of traces associated with a program failure, identifying a subset of unique traces can reduce the debugging effort by producing a smaller set of candidate fault locations. The process of identifying unique traces, however, is subject to the presence of irrelevant variations in the sequence of trace events, which can make a trace appear unique when it is not. In this paper we present an approach to reduce inconsequential and potentially detrimental trace variations. The approach decomposes traces into segments on which irrelevant variations caused by event ordering or repetition can be identified, and then used to normalize the traces in the pool. The approach is investigated on two well-known client dynamic analyses by replicating the conditions under which they were originally assessed, revealing that the clients can deliver more precise results with the normalized traces.
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