Performance of recurrent event models on defect proneness data
M. K. Lintu () and
Asha Kamath ()
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M. K. Lintu: Manipal Academy of Higher Education
Asha Kamath: Manipal Academy of Higher Education
Annals of Operations Research, 2022, vol. 315, issue 2, No 58, 2209-2218
Abstract:
Abstract The repeated occurrence of the same event in a process is commonly observed in many domains. Such events are referred to as recurrent events. The time to occurrence of these repeated events varies from unit to unit with a possibility of events not occurring among some of the units. Invariably such data are dealt with using some of the techniques in survival analysis called recurrent event models, which are commonly encountered in epidemiological studies and clinical trials. However, it applies to other domains in science and technology. We illustrate the usefulness of recurrent event models in the context of defect proneness analysis in quality assessment of software. Some of the models in practice are introduced on data collected to study the impact of module size on defect proneness in the Mozilla product. Module size plays a significant role in defect proneness and each defect fix makes the class more susceptible to further defects. The risk estimates obtained from the different models vary owing to the differences in the properties of the models as well as the assumptions underlying it.
Keywords: Recurrent events; Survival model; Extended Cox models; Defect proneness; 62N01; 62N05 (search for similar items in EconPapers)
Date: 2022
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DOI: 10.1007/s10479-020-03884-2
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