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A software reliability model incorporating fault removal efficiency and it’s release policy

Umashankar Samal () and Ajay Kumar ()
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Umashankar Samal: ABV-IIITM
Ajay Kumar: ABV-IIITM

Computational Statistics, 2024, vol. 39, issue 6, No 11, 3137-3155

Abstract: Abstract For software developers as well as software product users, fault removal efficiency is crucial. Developers can estimate the amount of work required by evaluating the proportion of addressed faults. At the same time, the level of trust in utilizing the software product can be determined by customers, based on this information. The proposed software reliability growth model considers fault removal efficiency relevant to contemporary scenarios characterized by automated testing and debugging tools. A comparison between the proposed model and other existing models is conducted by utilizing two data sets from software testing. Additionally, the best release plans are created by considering warranty costs, risk costs, and error removal costs while still meeting reliability requirements.

Keywords: Non-homogenous Poisson process; Fault removal efficiency; Software cost model; Software reliability (search for similar items in EconPapers)
Date: 2024
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DOI: 10.1007/s00180-023-01430-9

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