| Literature DB >> 26120284 |
Lan Guo1, Bojan Cukic2, Harshinder Singh3.
Abstract
This paper describes a novel methodology for predicting fault prone modules. The methodology is based on Dempster-Shafer (D-S) belief networks. Our approach consists of three steps: First, building the Dempster-Shafer network by the induction algorithm; Second, selecting the predictors (attributes) by the logistic procedure; Third, feeding the predictors describing the modules of the current project into the inducted Dempster-Shafer network and identifying fault prone modules. We applied this methodology to a NASA dataset. The prediction accuracy of our methodology is higher than that achieved by logistic regression or discriminant analysis on the same dataset.Year: 2003 PMID: 26120284 PMCID: PMC4480607 DOI: 10.1109/ASE.2003.1240314
Source DB: PubMed Journal: Proc IEEE Int Autom Softw Eng Conf ISSN: 1527-1366