首页> 外文会议>International Conference on Software, Knowledge, Information Management and Applications >Robust comparison of similarity measures in analogy based software effort estimation
【24h】

Robust comparison of similarity measures in analogy based software effort estimation

机译:基于类比​​的软件努力估算中的相似性测量的鲁棒比较

获取原文

摘要

Analogy-based software effort estimation (ABE) is a widely-adopted method because of the accuracy it offered as well as its intuitiveness. ABE derives an estimated effort value for a new software project by adapting to the effort values of its similar past projects. Accurately measuring the level of similarity between software project cases is an important process of ABE in regards to whether the retrieved past similar projects are analogous to the new project. However, no one to the best of our knowledge has systematically evaluated and compared the similarity measures for the ABE process. In the present study, 6 similarity measures that have been most commonly appeared in the literatures in a 5-year timeframe up to the time of writing are systematically compared. Based on a comprehensive empirical experiment using 12 industrial datasets consisting of 952 project cases, together with 5 robust performance measures, and subject to a robust statistical test method, we found that simple similarity measures such as Euclidean and Manhattan similarity measures generally offer accurate estimation for software effort estimation datasets. Despite studies in other fields frequently discourage the use of these simple similarity measures, the results of the present study are otherwise supporting them as a crucial part of an ABE model.
机译:基于类比​​的软件努力估计(ABE)是一种广泛采用的方法,因为它提供的准确性以及其直观性。 ABE通过适应其类似过去项目的努力值来派生新软件项目的估计工作价值。准确测量软件项目案例之间的相似性水平是ABE的一个重要过程,对于检索到的过去的类似项目是否类似于新项目。但是,我们的知识中没有人提供系统地评估并比较了ABE过程的相似措施。在本研究中,系统地比较了6年的时间范围内最常出现的6个相似度措施,这是系统地比较写作时间的5年时间。基于通过由952个项目案例组成的12个工业数据集的全面实验,以及5个强大的绩效措施,并受到强大的统计测试方法,我们发现欧几里德和曼哈顿相似度措施等简单的相似性措施通常提供准确的估计软件工作估计数据集。尽管其他领域的研究经常阻止使用这些简单的相似性措施,但是本研究的结果否则将它们作为ABE模型的重要组成部分。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号