在Java中使用词干提取进行关注定位和Bug定位

Emily Hill, Shivani Rao, A. Kak
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引用次数: 34

摘要

随着基于文本的源代码搜索和分析越来越流行,使用词干来剥离后缀的情况也越来越多。尽管在信息检索界进行了广泛的研究,但在软件领域中,系统的相对有效性却相对未知。在本文中,我们研究了在Java软件领域中哪些知名的干器在问题定位和错误定位方面表现最好。针对这两个问题,我们评估了词干提取在六个不同Java应用程序的500多个搜索任务中的使用情况。利用MAP和Rank Measure,我们对词干提取对检索效率的影响进行了全面的定性研究和逐次的定量研究。正如人们所期望的那样,我们的贡献表明,词干提取如何影响检索性能是由其他因素介导的,例如使用tf-idf过滤常见的术语和查询的精确性质。具体来说,我们发现词干提取提高检索性能的程度与查询中自然语言内容的程度有关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the Use of Stemming for Concern Location and Bug Localization in Java
As the popularity of text-based source code search and analysis grows, the use of stemmers to strip suffixes has increased. Although widely investigated in the information retrieval community, the comparative effectiveness of stemmers in the domain of software is relatively unknown. In this paper, we investigate which of the well-known stemmers perform best in the domain of Java software for concern location and bug localization. For these two problems, we evaluate the use of stemming on over 500 search tasks for six different Java applications. Using MAP and Rank Measure, we conducted an overall qualitative study and a query-by-query quantitative study of the impact of stemming on retrieval effectiveness. As one might expect, our contribution demonstrates that how stemming affects retrieval performance is mediated by other factors, such as the use of tf-idf to filter commonly occurring terms and the precise nature of the queries. Specifically, we find that the extent to which stemming improves the retrieval performance relates to the degree of natural language content in a query.
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