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Defect Prediction Framework using Neural Networks for Business Intelligence Technology Based Projects

机译:基于神经网络的基于商业智能技术的项目的缺陷预测框架

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So far, researchers in field of defect prediction have published multiple approaches, but none of these publications have identified the Business Intelligence project life cycle. In this paper, we have taken data from 60 BI projects from a Data Analytics organization and have used the real project data to design a prediction model based on artificial neural networks. Results are evaluated with comparison of three different training algorithms, i.e., Lavenberg-Marquardt, Scaled Conjugate Gradient and Bayesian Regularization backpropagation algorithms, in the view of their ability to perform defect prediction. The objective is to design a prediction framework, which is expected to be effective and acceptable for predicting the defects in multiple phases across Business Intelligence projects.
机译:到目前为止,缺陷预测领域的研究人员已经发布了多种方法,但是这些出版物都没有确定商业智能项目的生命周期。在本文中,我们从数据分析组织的60个BI项目中获取了数据,并使用真实的项目数据来设计基于人工神经网络的预测模型。考虑到它们执行缺陷预测的能力,通过比较三种不同的训练算法,即Lavenberg-Marquardt,缩放共轭梯度和贝叶斯正则反向传播算法,对结果进行了评估。目的是设计一个预测框架,该框架对于在整个商业智能项目的多个阶段中预测缺陷是有效且可接受的。

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