基于特征选择的多层感知器神经网络软件缺陷预测

J. Catherine, S. Djodilatchoumy
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引用次数: 1

摘要

软件是不断发展的,因此它对每个软件供应商生产高质量和稳定的软件至关重要。最近,软件设计的范式发生了转变。软件工程最大的挑战之一是预测软件模块中的缺陷,以节省高质量的测试时间。随着软件开发挑战和约束的增加,诸如失败和错误之类的意外影响降低了软件的一致性和用户忠诚度,使无错误的软件变得更加复杂和令人沮丧。在本文中,我们分析了使用多层感知器神经网络[5](MLP-NN)进行缺陷的有效预测。我们还使用使用流行的特征选择方法选择的特征子集来执行MLP-NN。该模型在来自AEEEM数据集的5个数据集上进行了评估。将结果与其他常见分类器如逻辑回归、MLP-NN和随机树进行比较。研究结果表明,特征选择在提高预测精度方面起着重要作用。我们的模型在少数情况下具有更高的准确性,而在某些情况下与其他模型相当。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-Layer Perceptron Neural Network with Feature Selection for Software Defect Prediction
Software is continuously evolving and hence it is essential for the production of quality and stable software by every software provider. Recently there is a paradigm shift in how software is designed. One of the biggest challenges of software engineering is predicting defects in software modules, to save quality testing time. As software development challenges and constraints rise, unexpected effects such as failure and errors decrease the consistency of software and user loyalty, rendering error-free software more complex and frustrating. In this paper, we analyze the use of Multi-Layer Perceptron Neural Network [5] (MLP-NN) for the efficient prediction of defects. We have also executed the MLP-NN with a subset of features selected using popular feature selection methods. The model was evaluated on 5 datasets from the AEEEM dataset. The results were compared with other common classifiers like Logistic Regression, MLP-NN, and Random Tree. The findings indicate that feature selection has a major role in increasing the accuracy of prediction. Our model had higher accuracy in few cases while at par with others in some.
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