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A Study on Prediction Models

Vidyadevi G. Biradar

Abstract


Defect-prone code development may be improved by focusing on recent research on software defect prediction. This improves software quality and saves resources. Many approaches, datasets, and frameworks for predicting software defects have been published, but it is difficult to get an overall sense of where defect prediction research is now at. In this research article, we have tried to understand the relationships between various variables which are important for IT SME’s. The study is carried out with the help of a well-structured questionnaire using IBM SPSS tool for data analysis and interpretation.


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References


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