A Novel Software Fault Prediction Approach To Predict Error-type Proneness in the Java Programs Using Stream X-Machine and Machine Learning

K. Phung, E. Ogunshile, M. Aydin
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引用次数: 1

Abstract

Software fault prediction makes software quality assurance process more efficient and economic. Most of the works related to software fault prediction have mainly focused on classifying software modules as faulty or not, which does not produce sufficient information for developers and testers. In this paper, we explore a novel approach using a streamlined process linking Stream X-Machine and machine learning techniques to predict if software modules are prone to having a particular type of runtime error in Java programs. In particular, Stream X-Machine is used to model and generate test cases for different types of Java runtime errors, which will be employed to extract error-type data from the source codes. This data is subsequently added to the collected software metrics to form new training data sets. We then explore the capabilities of three machine learning techniques (Support Vector Machine, Decision Tree, and Multi-layer Perceptron) for error-type proneness prediction. The experimental results showed that the new data sets could significantly improve the performances of machine learning models in terms of predicting error-type proneness.
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基于流X-Machine和机器学习的Java程序错误类型预测方法
软件故障预测使软件质量保证过程更加高效和经济。大多数与软件故障预测相关的工作主要集中在对软件模块进行故障或非故障的分类,这并不能为开发人员和测试人员提供足够的信息。在本文中,我们探索了一种新颖的方法,使用流线型流程将流X-Machine和机器学习技术联系起来,以预测软件模块是否容易在Java程序中出现特定类型的运行时错误。特别地,Stream X-Machine被用来为不同类型的Java运行时错误建模和生成测试用例,它将被用来从源代码中提取错误类型的数据。这些数据随后被添加到收集的软件度量中,形成新的训练数据集。然后,我们探索了三种机器学习技术(支持向量机,决策树和多层感知器)用于错误类型倾向预测的能力。实验结果表明,新数据集可以显著提高机器学习模型在预测错误类型倾向方面的性能。
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