Defect Prediction using Combined Product and Project Metrics - A Case Study from the Open Source "Apache" MyFaces Project Family

D. Wahyudin, Alexander Schatten, D. Winkler, A. Tjoa, S. Biffl
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引用次数: 37

Abstract

The quality evaluation of open source software (OSS) products, e.g., defect estimation and prediction approaches of individual releases, gains importance with increasing OSS adoption in industry applications. Most empirical studies on the accuracy of defect prediction and software maintenance focus on product metrics as predictors that are available only when the product is finished. Only few prediction models consider information on the development process (project metrics) that seems relevant to quality improvement of the software product. In this paper, we investigate defect prediction with data from a family of widely used OSS projects based both on product and project metrics as well as on combinations of these metrics. Main results of data analysis are (a) a set of project metrics prior to product release that had strong correlation to potential defect growth between releases and (b) a combination of product and project metrics enables a more accurate defect prediction than the application of one single type of measurement. Thus, the combined application of project and product metrics can (a) improve the accuracy of defect prediction, (b) enable a better guidance of the release process from project management point of view, and (c) help identifying areas for product and process improvement.
使用组合产品和项目度量进行缺陷预测——一个来自开源“Apache”MyFaces项目家族的案例研究
开源软件(OSS)产品的质量评估,例如单个版本的缺陷评估和预测方法,随着工业应用中越来越多地采用OSS而变得越来越重要。大多数关于缺陷预测和软件维护的准确性的实证研究都将重点放在产品度量上,作为仅在产品完成时可用的预测器。只有少数预测模型考虑了与软件产品质量改进相关的开发过程(项目度量)的信息。在本文中,我们使用来自一系列广泛使用的基于产品和项目度量以及这些度量的组合的OSS项目的数据来研究缺陷预测。数据分析的主要结果是(a)产品发布之前的一组项目度量标准,它与发布之间潜在的缺陷增长有很强的相关性,以及(b)产品和项目度量标准的组合能够比应用单一类型的度量标准更准确地预测缺陷。因此,项目和产品度量标准的组合应用可以(a)提高缺陷预测的准确性,(b)从项目管理的角度更好地指导发布过程,以及(c)帮助确定产品和过程改进的领域。
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