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Predicting Software Maintenance effort using neural networks

机译:使用神经网络预测软件维护工作量

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Software Maintenance is an important phase of software development lifecycle, which starts once the software has been deployed at the customer's end. A lot of maintenance effort is required to change the software after it is in operation. Therefore, predicting the effort and cost associated with the maintenance activities such as correcting and fixing the defects has become one of the key issues that need to be analyzed for effective resource allocation and decision-making. In view of this issue, we have developed a model based on text mining techniques using machine learning method namely, Radial Basis Function of neural network. We apply text mining techniques to identify the relevant attributes from defect reports and relate these relevant attributes to software maintenance effort prediction. The proposed model is validated using ‘Browser’ application package of Android Operating System. Receiver Operating Characteristics (ROC) analysis is done to interpret the results obtained from model prediction by using the value of Area Under the Curve (AUC), sensitivity and a suitable threshold criterion known as the cut-off point. It is evident from the results that the performance of the model is dependent on the number of words considered for classification and therefore shows the best results with respect to top-100 words. The performance is irrespective of the type of effort category.
机译:软件维护是软件开发生命周期的一个重要阶段,一旦软件已经部署在客户端即可。在运行过程中,需要大量的维护工作来更改软件。因此,预测与维护活动相关的努力和成本,例如校正和修复缺陷已成为有效资源分配和决策需要分析的关键问题之一。鉴于此问题,我们使用机器学习方法制定了一种基于文本挖掘技术的模型,即神经网络的径向基函数。我们应用文本挖掘技术来识别缺陷报告的相关属性,并将这些相关属性与软件维护工作预测相关。通过Android操作系统的“浏览器”应用程序包验证了所提出的模型。接收器操作特性(ROC)分析是通过使用曲线(AUC)下的面积的值,灵敏度和称为截止点的合适阈值标准来解释从模型预测获得的结果。从结果中可以看出,模型的性能取决于所考虑的分类的单词数,因此显示出与前100个单词的最佳结果。性能无论努力类别类型如何。

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