Title of article
Data mining in software metrics databases
Author/Authors
Bunke، Horst نويسنده , , Dicka، Scott نويسنده , , Meeks، Aleksandra نويسنده , , Last، Mark نويسنده , , Kandel، Abraham نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2004
Pages
-80
From page
81
To page
0
Abstract
We investigate the use of data mining for the analysis of software metric databases, and some of the issues in this application domain. Software metrics are collected at various phases of the software development process, in order to monitor and control the quality of a software product. However, software quality control is complicated by the complex relationship between these metrics and the attributes of a software development process. Data mining has been proposed as a potential technology for supporting and enhancing our understanding of software metrics and their relationship to software quality. In this paper, we use fuzzy clustering to investigate three datasets of software metrics, along with the larger issue of whether supervised or unsupervised learning is more appropriate for software engineering problems. While our findings generally confirm the known linear relationship between metrics and change rates, some interesting behaviors are noted. In addition, our results partly contradict earlier studies that only used correlation analysis to investigate these datasets. These results illustrate how intelligent technologies can augment traditional statistical inference in software quality control.
Keywords
Machine learning , Software reliability , Data mining , artificial intelligence , Fuzzy clustering , Software testing
Journal title
FUZZY SETS AND SYSTEMS
Serial Year
2004
Journal title
FUZZY SETS AND SYSTEMS
Record number
118164
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