基于机器学习模型的软件故障预测实验研究

Thi Minh Phuong Ha, Duy Hung Tran, L. Hạnh, N. Binh
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引用次数: 3

摘要

在软件生命周期中,故障是造成时间和成本浪费的主要原因。在早期阶段预测故障可以提高系统的质量和可靠性,也可以降低软件开发的成本。许多研究证明,软件度量是软件故障预测的有效元素。此外,许多用于软件故障预测的机器学习技术已经被开发出来。利用机器学习技术确定哪一组指标对故障预测有效是很重要的。在本文中,我们进行了一项实验研究,以评估七种流行技术的性能,包括逻辑回归,k近邻,决策树,随机森林,朴素贝叶斯,支持向量机和多层感知机,使用Promise存储库数据集使用的软件指标。我们的实验是在方法级和类级数据集上进行的。实验结果表明,支持向量机在类级数据集上具有更高的性能,多层感知在方法级数据集上具有更好的准确性。
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Experimental Study on Software Fault Prediction Using Machine Learning Model
Faults are the leading cause of time consuming and cost wasting during software life cycle. Predicting faults in early stage improves the quality and reliability of the system and also reduces cost for software development. Many researches proved that software metrics are effective elements for software fault prediction. In addition, many machine learning techniques have been developed for software fault prediction. It is important to determine which set of metrics are effective for predicting fault by using machine learning techniques. In this paper, we conduct an experimental study to evaluate the performance of seven popular techniques including Logistic Regression, K-nearest Neighbors, Decision Tree, Random Forest, Naive Bayes, Support Vector Machine and Multilayer Perceptron using software metrics from Promise repository dataset usage. Our experiment is performed on both method-level and class-level datasets. The experimental results show that Support Vector Machine archives a higher performance in class-level datasets and Multilayer Perception produces a better accuracy in method-level datasets among seven techniques above.
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