On the effectiveness of accuracy of automated feature location technique

T. Ishio, Shinpei Hayashi, H. Kazato, T. Oshima
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引用次数: 5

Abstract

Automated feature location techniques have been proposed to extract program elements that are likely to be relevant to a given feature. A more accurate result is expected to enable developers to perform more accurate feature location. However, several experiments assessing traceability recovery have shown that analysts cannot utilize an accurate traceability matrix for their tasks. Because feature location deals with a certain type of traceability links, it is an important question whether the same phenomena are visible in feature location or not. To answer that question, we have conducted a controlled experiment. We have asked 20 subjects to locate features using lists of methods of which the accuracy is controlled artificially. The result differs from the traceability recovery experiments. Subjects given an accurate list would be able to locate a feature more accurately. However, subjects could not locate the complete implementation of features in 83% of tasks. Results show that the accuracy of automated feature location techniques is effective, but it might be insufficient for perfect feature location.
自动特征定位技术精度的有效性研究
已经提出了自动特征定位技术来提取可能与给定特征相关的程序元素。更准确的结果将使开发人员能够执行更准确的特性定位。然而,几个评估可追溯性恢复的实验表明,分析人员不能为他们的任务利用准确的可追溯性矩阵。由于特征定位处理特定类型的可追溯性链接,因此在特征定位中是否可见相同的现象是一个重要的问题。为了回答这个问题,我们进行了一项对照实验。我们要求20名受试者使用人工控制精度的方法列表来定位特征。结果与可追溯性恢复实验不同。给受试者一个准确的列表将能够更准确地定位一个特征。然而,在83%的任务中,受试者无法找到功能的完整实现。结果表明,自动特征定位技术的精度是有效的,但对于完美的特征定位可能存在不足。
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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