Selecting software reliability growth models and improving their predictive accuracy using historical projects data
Autor: | Christoffer Höglund, Fredrik Törner, Jörgen Hansson, Rakesh Rana, Wilhelm Meding, Martin Nilsson, Christian Berger, Miroslaw Staron |
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Rok vydání: | 2014 |
Předmět: |
Computer science
business.industry Software development Software quality Software metric Reliability engineering Software development process Software Embedded software Hardware and Architecture Software sizing Software construction Goal-Driven Software Development Process Software reliability testing Software system Software verification and validation business Software verification Information Systems |
Zdroj: | Journal of Systems and Software. 98:59-78 |
ISSN: | 0164-1212 |
DOI: | 10.1016/j.jss.2014.08.033 |
Popis: | 8 software reliability growth models are evaluated on 11 large projects.Logistic and Gompertz models have the best fit and asymptote predictions.Using growth rate from earlier projects improves asymptote prediction accuracy.Trend analysis allows choosing the best shape of the model at 50% of project time. During software development two important decisions organizations have to make are: how to allocate testing resources optimally and when the software is ready for release. SRGMs (software reliability growth models) provide empirical basis for evaluating and predicting reliability of software systems. When using SRGMs for the purpose of optimizing testing resource allocation, the model's ability to accurately predict the expected defect inflow profile is useful. For assessing release readiness, the asymptote accuracy is the most important attribute. Although more than hundred models for software reliability have been proposed and evaluated over time, there exists no clear guide on which models should be used for a given software development process or for a given industrial domain.Using defect inflow profiles from large software projects from Ericsson, Volvo Car Corporation and Saab, we evaluate commonly used SRGMs for their ability to provide empirical basis for making these decisions. We also demonstrate that using defect intensity growth rate from earlier projects increases the accuracy of the predictions. Our results show that Logistic and Gompertz models are the most accurate models; we further observe that classifying a given project based on its expected shape of defect inflow help to select the most appropriate model. |
Databáze: | OpenAIRE |
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