DocumentCode
3414591
Title
A non-parametric approach to software reliability prediction
Author
Barghout, May ; Littlewood, Bev ; Abdel-Ghaly, Abdallah
Author_Institution
Centre for Software Reliability, City Univ., London, UK
fYear
35735
fDate
2-5 Nov1997
Firstpage
366
Lastpage
377
Abstract
The large amount of literature on software reliability assessment and prediction is essentially concerned with parametric models: the inter failure time random variables are assumed to come from parametric families of distributions. Such models involve quite strong assumptions. The motivation for the present work is to relax these assumptions and-in the tradition of non parametric statistics generally-`allow the data to speak for themselves´. We present a new non-parametric model for reliability prediction which is based upon the use of kernel density estimators and compare its accuracy on some real data sets with the predictions that come from several of the better conventional models. These initial results are encouraging: the new models seem to perform as well as the best of the earlier models
Keywords
data handling; nonparametric statistics; software reliability; inter failure time random variables; kernel density estimators; non parametric approach; non parametric model; non parametric statistics; parametric families; parametric models; real data sets; software reliability assessment; software reliability prediction; strong assumptions; Accuracy; Battery powered vehicles; Distribution functions; Kernel; Parameter estimation; Parametric statistics; Predictive models; Random variables; Software reliability; Statistical distributions;
fLanguage
English
Publisher
ieee
Conference_Titel
Software Reliability Engineering, 1997. Proceedings., The Eighth International Symposium on
Conference_Location
Albuquerque, NM
Print_ISBN
0-8186-8120-9
Type
conf
DOI
10.1109/ISSRE.1997.630885
Filename
630885
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