Title :
Search-Based Prediction of Fault Count Data
Author :
Afzal, Wasif ; Torkar, Richard ; Feldt, Robert
Author_Institution :
Blekinge Inst. of Technol., Ronneby
Abstract :
Symbolic regression, an application domain of genetic programming (GP), aims to find a function whose output has some desired property, like matching target values of a particular data set. While typical regression involves finding the coefficients of a pre-defined function, symbolic regression finds a general function, with coefficients, fitting the given set of data points. The concepts of symbolic regression using genetic programming can be used to evolve a model for fault count predictions. Such a model has the advantages that the evolution is not dependent on a particular structure of the model and is also independent of any assumptions, which are common in traditional time-domain parametric software reliability growth models. This research aims at applying experiments targeting fault predictions using genetic programming and comparing the results with traditional approaches to compare efficiency gains.
Keywords :
genetic algorithms; regression analysis; software fault tolerance; genetic programming; search-based prediction; software fault count data; software reliability growth model; symbolic regression; Accuracy; Application software; Genetic programming; Predictive models; Project management; Software engineering; Software quality; Software reliability; Software systems; Time domain analysis; Genetic programming; fault prediction; software reliability growth model; symbolic regression;
Conference_Titel :
Search Based Software Engineering, 2009 1st International Symposium on
Conference_Location :
Windsor
Print_ISBN :
978-0-7695-3675-0
DOI :
10.1109/SSBSE.2009.17