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An Empirical Study on the Procedure to Derive Software Quality Estimation Models


Affiliations
1 Department of Electrical and Computer Engineering, University of Western Ontario, London, Ontario, N6A 5B9, Canada
2 NFA Estimation Inc., Richmond Hill, Ontario, Canada
 

Software quality assurance has been a heated topic for several decades. If factors that influence software quality can be identified, they may provide more insight for better software development management. More precise quality assurance can be achieved by employing resources according to accurate quality estimation at the early stages of a project. In this paper, a general procedure is proposed to derive software quality estimation models and various techniques are presented to accomplish the tasks in respective steps. Several statistical techniques together with machine learning method are utilized to verify the effectiveness of software metrics. Moreover, a neuro-fuzzy approach is adopted to improve the accuracy of the estimation model. This procedure is carried out based on data from the ISBSG repository to present its empirical value.

Keywords

Software Quality Estimation, Software Metrics, Regression, Neural Networks, Fuzzy Logic.
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  • An Empirical Study on the Procedure to Derive Software Quality Estimation Models

Abstract Views: 200  |  PDF Views: 122

Authors

Jie Xu
Department of Electrical and Computer Engineering, University of Western Ontario, London, Ontario, N6A 5B9, Canada
Danny Ho
NFA Estimation Inc., Richmond Hill, Ontario, Canada
Luiz Fernando Capretz
Department of Electrical and Computer Engineering, University of Western Ontario, London, Ontario, N6A 5B9, Canada

Abstract


Software quality assurance has been a heated topic for several decades. If factors that influence software quality can be identified, they may provide more insight for better software development management. More precise quality assurance can be achieved by employing resources according to accurate quality estimation at the early stages of a project. In this paper, a general procedure is proposed to derive software quality estimation models and various techniques are presented to accomplish the tasks in respective steps. Several statistical techniques together with machine learning method are utilized to verify the effectiveness of software metrics. Moreover, a neuro-fuzzy approach is adopted to improve the accuracy of the estimation model. This procedure is carried out based on data from the ISBSG repository to present its empirical value.

Keywords


Software Quality Estimation, Software Metrics, Regression, Neural Networks, Fuzzy Logic.