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首页> 外文期刊>International journal of advanced intelligence paradigms >A statistical comparison for evaluating the effectiveness of linear and nonlinear manifold detection techniques for software defect prediction
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A statistical comparison for evaluating the effectiveness of linear and nonlinear manifold detection techniques for software defect prediction

机译:用于评估线性和非线性流形检测技术对软件缺陷预测的有效性的统计比较

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摘要

Most of the software systems are released without predicting defects and therefore, this paper presents a new effective technique - manifold detection technique (MDT) is essential and different than earlier applied defect prediction methods like regression, feature selection methods, etc. In this paper, performance of classifiers has been compared with or without MDTs to evaluate the effectiveness of different MDTs (linear and nonlinear) by reducing the dimensions of software datasets. In this process, eight classifiers were applied to four PROMISE datasets to determine the best performing classifier with respect to prediction performance measuring factors (accuracy, precision, recall, F-measure, AUC, misclassification error) with or without MDTs. The experimental results statistically tested by paired two-tailed t-test proved that FastMVU is the most accurate result producing technique as compared to all other nonlinear MDTs and Bayesian network (BN) is the most effective technique for software defect prediction using with or without MDTs.
机译:大多数软件系统在发布时都没有预测缺陷,因此,本文提出了一种新的有效技术-流形检测技术(MDT)是必不可少的,并且与早期应用的缺陷预测方法(如回归,特征选择方法等)不同。通过减少软件数据集的维数,已比较了有无MDT的分类器性能,以评估不同MDT(线性和非线性)的有效性。在此过程中,将八个分类器应用于四个PROMISE数据集,以确定具有或不具有MDT的预测性能测量因子(准确性,精度,召回率,F量度,AUC,误分类误差)的最佳性能分类器。通过配对的双尾t检验对实验结果进行统计检验,证明与所有其他非线性MDT相比,FastMVU是最准确的结果生成技术,而使用或不使用MDT的贝叶斯网络(BN)是最有效的软件缺陷预测技术。

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