DocumentCode
1258495
Title
Comparison of software-reliability-growth predictions: neural networks vs parametric-recalibration
Author
Sitte, Renate
Author_Institution
Griffith Univ., Brisbane, Qld., Australia
Volume
48
Issue
3
fYear
1999
fDate
9/1/1999 12:00:00 AM
Firstpage
285
Lastpage
291
Abstract
This paper compares empirically the predictive performance of two different methods of software reliability prediction: `neural networks´ and `recalibration for parametric models´. Both methods were claimed to predict as good or better than the conventional parametric models that have been used-with limited results so far. Each method applied its own predictability measure, impeding a direct comparison. To be able to compare, this study uses a common predictability measure and common data-sets. This study reveals that neural networks are not only much simpler to use than the recalibration method, but that they are equal or better trend (variable term) predictors. The neural network prediction is further improved by preparing the data with a running average, instead of the traditionally used averages of grouped data points. Neural network predictions do not depend on prior known models. Off-the-shelf neural network software tools make it easy to apply the method
Keywords
neural nets; reliability theory; software reliability; neural networks; parametric recalibration; predictability measure; predictive performance comparison; software reliability growth predictions; Feedforward systems; Gold; Humans; Impedance; Neural networks; Parametric statistics; Predictive models; Software reliability; Software testing; Software tools;
fLanguage
English
Journal_Title
Reliability, IEEE Transactions on
Publisher
ieee
ISSN
0018-9529
Type
jour
DOI
10.1109/24.799900
Filename
799900
Link To Document