应用多种统计技术进行异构跨项目缺陷预测的实证研究

IF 0.2 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS International Journal of e-Collaboration Pub Date : 2021-04-01 DOI:10.4018/ijec.2021040104
Rohit Vashisht, S. Rizvi
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引用次数: 2

摘要

跨项目缺陷预测(CPDP)通过由另一个项目的缺陷数据训练的缺陷预测模型(DPM)来预测目标项目中的缺陷。然而,CPDP有一个普遍的问题(即,不同的项目必须具有相同的特征来描述它们自己)。本文强调异构CPDP (HCPDP)建模,它不需要两个应用程序之间的相同度量集,并基于显示给定数据集对的值的可比较分布的度量来构建DPM。本文对HCPDP模型进行了实证和理论评价,该模型包括三个主要阶段:特征排序和特征选择,度量匹配,最后预测目标应用中的缺陷。研究工作已经在三个开源项目的13个基准数据集上进行了实验。结果表明,HCPDP的性能与项目缺陷预测(WPDP)中的基线非常相似,XG增强分类模型与Kendall的相关方法结合使用时,与其他分类器集相比,效果最好。
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An Empirical Study of Heterogeneous Cross-Project Defect Prediction Using Various Statistical Techniques
Cross-project defect prediction (CPDP) forecasts flaws in a target project through defect prediction models (DPM) trained by defect data of another project. However, CPDP has a prevalent problem (i.e., distinct projects must have identical features to describe themselves). This article emphasizes on heterogeneous CPDP (HCPDP) modeling that does not require same metric set between two applications and builds DPM based on metrics showing comparable distribution in their values for a given pair of datasets. This paper evaluates empirically and theoretically HCPDP modeling, which comprises of three main phases: feature ranking and feature selection, metric matching, and finally, predicting defects in the target application. The research work has been experimented on 13 benchmarked datasets of three open source projects. Results show that performance of HCPDP is very much comparable to baseline within project defect prediction (WPDP) and XG boosting classification model gives best results when used in conjunction with Kendall's method of correlation as compared to other set of classifiers.
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来源期刊
International Journal of e-Collaboration
International Journal of e-Collaboration COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
1.90
自引率
5.90%
发文量
73
期刊介绍: The International Journal of e-Collaboration (IJeC) addresses the design and implementation of e-collaboration technologies, assesses its behavioral impact on individuals and groups, and presents theoretical considerations on links between the use of e-collaboration technologies and behavioral patterns. An innovative collection of the latest research findings, this journal covers significant topics such as Web-based chat tools, Web-based asynchronous conferencing tools, e-mail, listservs, collaborative writing tools, group decision support systems, teleconferencing suites, workflow automation systems, and document management technologies.
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