跨项目故障预测的简单回归模型集成方法

Satoshi Uchigaki, S. Uchida, Koji Toda, Akito Monden
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引用次数: 26

摘要

在软件开发中,对易出错模块的预测是进行有效软件测试的一个重要挑战。然而,在跨项目预测中,由于基础项目(用于建立预测模型)与目标项目(用于应用预测模型)之间预测变量的分布存在较大差异,因此可能无法达到较高的预测精度。为了提高跨项目预测的精度,本文提出了“简单回归模型集合”的预测方法。该方法使用简单逻辑回归模型(例如1-预测变量)的输出加权和,以提高逻辑模型的泛化能力。为了评估所提出方法的性能,我们使用NASA IV&V设施度量数据计划的12个项目的数据集进行了132次跨项目预测组合。结果表明,该方法在Alberg图的AUC方面优于传统的逻辑回归模型。
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An Ensemble Approach of Simple Regression Models to Cross-Project Fault Prediction
In software development, prediction of fault-prone modules is an important challenge for effective software testing. However, high prediction accuracy may not be achieved in cross-project prediction, since there is a large difference in distribution of predictor variables between the base project (for building prediction model) and the target project (for applying prediction model.) In this paper we propose an prediction technique called "an ensemble of simple regression models" to improve the prediction accuracy of cross-project prediction. The proposed method uses weighted sum of outputs of simple (e.g. 1-predictor variable) logistic regression models to improve the generalization ability of logistic models. To evaluate the performance of the proposed method, we conducted 132 combinations of cross-project prediction using datasets of 12 projects from NASA IV&V Facility Metrics Data Program. As a result, the proposed method outperformed conventional logistic regression models in terms of AUC of the Alberg diagram.
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