Software failure prediction based on a Markov Bayesian network model
Journal of Systems and Software
Bayesian network based software reliability prediction with an operational profile
Journal of Systems and Software
Software reliability forecasting by support vector machines with simulated annealing algorithms
Journal of Systems and Software
Software reliability identification using functional networks: A comparative study
Expert Systems with Applications: An International Journal
Expert Systems with Applications: An International Journal
Warranty cost analyses using quasi-renewal processes for multicomponent systems
IEEE Transactions on Systems, Man, and Cybernetics, Part A: Systems and Humans
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In our previous paper (2000), a Bayesian software reliability model with stochastically decreasing hazard rate was presented. Within any given failure time interval, the hazard rate is a function of both total testing time as well as number of encountered encountered failures. In this paper, to improve the predictive performance of our previously proposed model, a pseudo-failure is inserted whenever there is a period of failure-free execution equals (1-α)th percentile of the predictive distribution for time until the next failure has passed. We apply the enhanced model with pseudo-failures inserted to actual software failure data and show it gives better results under the sum of square errors criteria compared to previous Bayesian models and other existing times between failures models