学术项目缺陷数据集在跨项目软件缺陷预测中的价值和适用性

Arvinder Kaur, Kamaldeep Kaur
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引用次数: 4

摘要

本文提出了跨项目软件缺陷预测的新概念。利用学术项目的缺陷数据作为训练数据,对现实世界软件系统中的缺陷进行预测。相关训练数据通过有序投影算法进行模式过滤[14]。在使用贝叶斯网络分类器的16个实际软件系统中,有12个系统的曲线下面积(AUC)值至少在0.7以上,令人满意。在当前的情况下,这个结果非常重要,因为许多软件创业公司都是由大学毕业生创办的,尤其是在印度。在创业初期,这些初创公司没有任何真实项目的缺陷数据,因此在大学收集的学术项目缺陷数据集是非常有用的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Value and Applicability of Academic Projects Defect Datasets in Cross-Project Software Defect Prediction
This paper presents a novel concept in cross-project software defect prediction. Defects in real world software systems are predicted, using defects data of academic projects as training data. Relevant training data are filtered using patterns by ordered projections algorithm by [14]. A satisfactory Area under curve(AUC) value of at least 0.7 and above is obtained for 12 out the 16 investigated real world software systems with Bayes Network classifier. This result is quite significant in the current scenario where many software startups are being launched by fresh graduates from Universities, particularly in India. At the beginning such startup companies do not have any defects data of real projects and hence defect datasets of academic projects collected at Universities can be really useful.
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