中国科学院机构知识库网格
Chinese Academy of Sciences Institutional Repositories Grid
data unpredictability in software defect-fixing effort prediction

文献类型:会议论文

作者He Zhimin ; Shu Fengdi ; Yang Ye ; Zhang Wen ; Wang Qing
出版日期2010
会议名称10th International Conference on Quality Software, QSIC 2010
会议日期37451
会议地点Zhangjiajie, China
关键词Defects Forecasting Learning systems Mathematical models Quality management
页码220-226
英文摘要The prediction of software defect-fixing effort is important for strategic resource allocation and software quality management. Machine learning techniques have become very popular in addressing this problem and many related prediction models have been proposed. However, almost every model today faces a challenging issue of demonstrating satisfactory prediction accuracy and meaningful prediction results. In this paper, we investigate what makes high-precision prediction of defect-fixing effort so hard from the perspective of the characteristics of defect dataset. We develop a method using a metric to quantitatively analyze the unpredictability of a defect dataset and carry out case studies on two defect datasets. The results show that data unpredictability is a key factor for unsatisfactory prediction accuracy and our approach can explain why high-precision prediction for some defect datasets is hard to achieve inherently. We also provide some suggestions on how to collect highly predictable defect data. © 2010 IEEE.
会议主办者National Laboratory for Parallel and Distributed Processing; The University of Hong Kong
会议录Proceedings - International Conference on Quality Software
会议录出版地United States
ISSN号15506002
ISBN号9780770000000
源URL[http://124.16.136.157/handle/311060/8720]  
专题软件研究所_互联网软件技术实验室 _会议论文
推荐引用方式
GB/T 7714
He Zhimin,Shu Fengdi,Yang Ye,et al. data unpredictability in software defect-fixing effort prediction[C]. 见:10th International Conference on Quality Software, QSIC 2010. Zhangjiajie, China. 37451.

入库方式: OAI收割

来源:软件研究所

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