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Discrete software reliability growth modeling for errors of different severity incorporating change-point concept
Authors:D. N. Goswami  Sunil K. Khatri  Reecha Kapur
Affiliation:(1) School of Studies in Computer Science and Applications, Jiwaji University, Gwalior, 474 011, India;(2) Mother Teresa Institute of Management, Guru Gobind Singh Indraprastha University, Delhi, 110 092, India;(3) Department of Mathematics and Computer Applications, Bundelkhand University, Jhansi, 284 128, India
Abstract:Several software reliability growth models (SRGM) have been developed to monitor the reliability growth during the testing phase of software development. In most of the existing research available in the literatures, it is considered that a similar testing effort is required on each debugging effort. However, in practice, different types of faults may require different amounts of testing efforts for their detection and removal. Consequently, faults are classified into three categories on the basis of severity: simple, hard and complex. This categorization may be extended to r type of faults on the basis of severity. Although some existing research in the literatures has incorporated this concept that fault removal rate (FRR) is different for different types of faults, they assume that the FRR remains constant during the overall testing period. On the contrary, it has been observed that as testing progresses, FRR changes due to changing testing strategy, skill, environment and personnel resources. In this paper, a general discrete SRGM is proposed for errors of different severity in software systems using the change-point concept. Then, the models are formulated for two particular environments. The models were validated on two real-life data sets. The results show better fit and wider applicability of the proposed models as to different types of failure datasets.
Keywords:Discrete software reliability growth model  non-homogeneous Poisson process  fault severity  change point  probability generating function
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