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A Value-Added Predictive Defect Type Distribution Model Based on Project Characteristics
May 14-May 16
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/ICIS.2008.36Seventh IEEE/ACIS International Confe ...
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In software project management, there are three major factors to predict and control; size, effort, and quality. Much software engineering work has focused on these. When it comes to software quality, there are various possible quality characteristics of software, but in practice, quality management frequently revolves around defects, and delivered defect density has become the current de facto industry standard. Thus, research related to software quality has been focused on modeling residual defects in software in order to estimate software reliability. Currently, software engineering literature still does not have a complete defect prediction for a software product although much work has been performed to predict software quality.On the other side, the number of defects alone cannot be sufficient information to provide the basis for planning quality assurance activities and assessing them during execution. That is, for project management to be improved, we need to predict other possible information about software quality such as in-process defects, their types, and so on. In this paper, we propose a new approach for predicting the distribution of defects and their types based on project characteristics in the early phase. For this approach, the model for prediction was established using the curve-fitting method and regression analysis. The maximum likelihood estimation (MLE) was used in fitting the Weibull probability density function to the actual defect data, and regression analysis was used in identifying the relationship between the project characteristics and the Weibull parameters. The research model was validated by cross-validation.
Index Terms:
In-process Defect Prediction, Defect Type Distribution, Weibull Function, Maximum Likelihood Estimation, Software Reliability
Citation:
Youngki Hong, Jongmoon Baik, In-Young Ko, Ho-Jin Choi, "A Value-Added Predictive Defect Type Distribution Model Based on Project Characteristics," icis, pp.469-474, Seventh IEEE/ACIS International Conference on Computer and Information Science (icis 2008), 2008
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