loading...
Estimating Software Quality with Advanced Data Mining Techniques
Tahiti, French Polynesia October 29-November 03
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/ICSEA.2006.37International Conference on Software ...
 This Article 
 
PDF
HTML
IEEE Xplore Subscribers
 
 Share 
   
 Bibliographic References 
   
 Add to: 
 
Digg
Furl
Spurl
Blink
Simpy
Google
Del.icio.us
Y!MyWeb
 
 Search 
   
Matej Mertik, University of Maribor, Slovenia
Mitja Lenic, University of Maribor, Slovenia
Gregor Stiglic, University of Maribor, Slovenia
Peter Kokol, University of Maribor, Slovenia
Current software quality estimation models often involve the use of supervised learning methods for building a software fault prediction models. In such models, dependent variable usually represents a software quality measurement indicating the quality of a module by risk-basked class membership, or the number of faults. Independent variables include various software metrics as McCabe, Error Count, Halstead, Line of Code, etc... In this paper we present the use of advanced tool for data mining called Multimethod on the case of building software fault prediction model. Multimethod combines different aspects of supervised learning methods in dynamical environment and therefore can improve accuracy of generated prediction model. We demonstrate the use Multimethod tool on the real data from the Metrics Data Project Data (MDP) Repository. Our preliminary empirical results show promising potentials of this approach in predicting software quality in a software measurement and quality dataset.
Index Terms:
Software quality, Multimethod data mining, Supervised learning, Software fault prediction models
Citation:
Matej Mertik, Mitja Lenic, Gregor Stiglic, Peter Kokol, "Estimating Software Quality with Advanced Data Mining Techniques," icsea, pp.19, International Conference on Software Engineering Advances (ICSEA'06), 2006
Usage of this product signifies your acceptance of the Terms of Use.


Suggestions