Parameter estimation of software reliability model using firefly optimization

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Abstract

This paper, presents an effective parameter estimation technique for software reliability growth models using firefly algorithm. Software failure rate with respect to time has always been a foremost concern in the software industry. Every second organization aims to achieve defect free software products, which makes software reliability prediction a burning research area. Software reliability prediction techniques generally use numerical estimation method for parameter estimation, which is certainly not the best. Local optimization, biasness and model’s parameter initialization are some foremost limitation, which eventually suffers the finding of optimal model parameters. Firefly optimization overcomes these limitations and provides optimal solution for parameter estimation of software reliability growth models. Goel Okumoto model and Vtub based fault detection rate model is selected to validate the results. Seven real world datasets were used to compare the proposed technique against Cuckoo search technique and CASRE tool. The results indicate the superiority of proposed approach over existing numerical estimation techniques.

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Choudhary, A., Baghel, A. S., & Sangwan, O. P. (2018). Parameter estimation of software reliability model using firefly optimization. In Advances in Intelligent Systems and Computing (Vol. 542, pp. 407–415). Springer Verlag. https://doi.org/10.1007/978-981-10-3223-3_39

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