Search-based prediction of fault count data
Blekinge Institute of Technology, School of Computing2009 (English)Conference paper (Refereed) Published
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.
Place, publisher, year, edition, pages
Windsor: IEEE Computer Society , 2009.
search-based, fault prediciton
Software Engineering Computer Science
IdentifiersURN: urn:nbn:se:bth-8089ISI: 000268319000004Local ID: oai:bth.se:forskinfo248E919B72CE2D82C12575C7002931EBISBN: 978-0-7695-3675-0OAI: oai:DiVA.org:bth-8089DiVA: diva2:835776
1st Internation Symposium on Search Based Software Engineering