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Article Dans Une Revue IEEE Transactions on Reliability Année : 1996

Generalized linear models in software reliability : parametric and semi-parametric approaches

Résumé

The penalized likelihood method is used for a new semi-parametric software reliability model. This new model is a nonparametric generalization of all parametric models where the failure intensity function depends only on the number of observed failures, viz. number-of-failures models (NF). Experimental results show that the semi-parametric model generally fits better and has better 1-step predictive quality than parametric NF. Using generalized linear models, this paper presents new parametric models (polynomial models) that have performances (deviance and predictive-qualities) approaching those of the semi-parametric model. Graphical and statistical techniques are used to choose the appropriate polynomial model for each data-set. The polynomial models are a very good compromise between the nonvalidity of the simple assumptions of classical NF, and the complexity of use and interpretation of the semi-parametric model. The latter represents a reference model that we approach by choosing adequate link and regression functions for the polynomial models.
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Dates et versions

hal-00196097 , version 1 (12-12-2007)

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Mhamed-Ali El Aroui, Christian Lavergne. Generalized linear models in software reliability : parametric and semi-parametric approaches. IEEE Transactions on Reliability, 1996, 45 (3), pp.463-470. ⟨10.1109/24.537017⟩. ⟨hal-00196097⟩

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