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Prediction of Defect Distribution based on Project Characteristics for Proactive Project Management

机译:基于主动项目管理项目特征的缺陷分布预测

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As software has been pervasive and various software projects have been executed since the 1970's, software project management has played a significant role in software industry. There are three major factors in project management; schedule, effort and quality. Especially, to represent quality of products, there are various possible quality characteristics of software, but in practice, frequently, quality management revolves around defects, and delivered defect density has become the current de facto industry standard. The researches related to software quality have been focused on modeling residual defects in software in order to estimate software reliability. However, only the predicted number of defects cannot be sufficient information to provide basis for planning quality assurance activities and assessing them during execution. That is, in order to let projects managers be able to identify the project related information in early phase, we need to predict other possible information for assuring software quality such as defect density by phases, defect types and so on. In this paper, we propose a new approach for predicting distribution of in-process defects, their types based on project characteristics in early phase. For this approach, the model for prediction is established using the curve fitting method and the regression analysis. The maximum likelihood estimation is used in fitting the Weibull probability density function to the actual defect data, and the regression analysis is used to identify the relationship between the project characteristics and the Weibull parameters. The research model is validated by using cross-validation technique.
机译:由于软件已被普遍存在,自1970年代以来已经执行了各种软件项目,软件项目管理在软件行业中发挥了重要作用。项目管理中有三个主要因素;进度,努力和质量。特别是代表产品质量,有各种可能的软件质量特征,但在实践中,经常,质量管理围绕缺陷,并提供缺陷密度已成为当前的事实上的行业标准。与软件质量相关的研究一直专注于在软件中建模残留缺陷以估计软件可靠性。但是,只有预测的缺陷数量不能是足够的信息,为规划质量保证活动提供基础并在执行期间评估它们。也就是说,为了让项目经理能够在早期阶段识别项目相关信息,我们需要预测用于通过阶段,缺陷类型等缺陷密度等软件质量来预测其他可能的信息。在本文中,我们提出了一种新方法,用于预测过程中的过程缺陷分布,其类型基于早期阶段的项目特征。对于这种方法,使用曲线拟合方法和回归分析建立预测模型。最大似然估计用于将Weibull概率密度函数拟合到实际缺陷数据,并且回归分析用于识别项目特征与Weibull参数之间的关系。通过使用交叉验证技术验证研究模型。

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