BAYESIAN INFERENCE FOR A SOFTWARE RELIABILITY MODEL USING METRICS INFORMATION.
In this paper, we are concerned with predicting the number of faults N and the time to next failure of a piece of software. Information in the form of software metrics data is used to estimate the prior distribution of N via a Poisson regression model. Given failure time data, and a well known model for software failures, we show how to sample the posterior distribution using Gibbs sampling, as implemented in the package "WinBugs". The approach is illustrated with a practical example.
Year of publication: |
2001-03
|
---|---|
Authors: | Wiper, Michael P. ; Bernal, M.T. RodrÃguez |
Institutions: | Departamento de Estadistica, Universidad Carlos III de Madrid |
Saved in:
freely available
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