Software Reliability Forecasting by Support Vector Machines with Simulated Annealing Algorithms

Journal of Systems and Software, Vol. 79, No. 6, pp. 747-755, June 2006

Posted: 13 Jan 2006

See all articles by Wei-Chiang Hong

Wei-Chiang Hong

Oriental Institute of Technology - Department of Information Management; Osaka University - Institute of Scientific and Industrial Research

Abstract

Support vector machines (SVMs) have been successfully employed to solve non-linear regression and time series problems. However, SVMs have rarely been applied to forecasting software reliability. This investigation elucidates the feasibility of the use of SVMs to forecast software reliability. Simulated annealing algorithms (SA) are used to select the parameters of an SVM model. Numerical examples taken from the existing literature are used to demonstrate the performance of software reliability forecasting. The experimental results reveal that the SVM model with simulated annealing algorithms (SVMSA) results in better predictions than the other methods. Hence, the proposed model is a valid and promising alternative for forecasting software reliability.

Keywords: Support vector machines, Simulated annealing algorithms, Software reliability forecasting

Suggested Citation

Hong, Wei-Chiang, Software Reliability Forecasting by Support Vector Machines with Simulated Annealing Algorithms. Journal of Systems and Software, Vol. 79, No. 6, pp. 747-755, June 2006, Available at SSRN: https://ssrn.com/abstract=874886

Wei-Chiang Hong (Contact Author)

Oriental Institute of Technology - Department of Information Management ( email )

No. 58, Sec. 2, Sichuan Rd., Panchiao
Taipei, 220
Taiwan
+886-2-7738-0145 ext.327#55 (Phone)
+886-2-7738-6310 (Fax)

Osaka University - Institute of Scientific and Industrial Research ( email )

8-1 Mihogaoka, Ibaraki
Osaka, 567
Japan

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