Evolutionary neural networks: a robust approach to software reliability problems

R. Hochman, T. Khoshgoftaar, E. B. Allen, J. Hudepohl
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引用次数: 41

Abstract

In this empirical study, from a large data set of software metrics for program modules, thirty distinct partitions into training and validation sets are automatically generated with approximately equal distributions of fault prone and not fault prone modules. Thirty classification models are built for each of the two approaches considered-discriminant analysis and the evolutionary neural network (ENN) approach-and their performances on corresponding data sets are compared. The lower error proportions for ENNs on fault prone, not fault prone, and overall classification were found to be statistically significant. The robustness of ENNs follows from their superior performance on the range of data configurations used. It is suggested that ENNs can be effective in other software reliability problem domains, where they have been largely ignored.
进化神经网络:一种解决软件可靠性问题的鲁棒方法
在这个实证研究中,从程序模块的软件度量的大数据集中,自动生成了30个不同的训练集和验证集,这些训练集和验证集具有大约相等的故障易发和非故障易发模块分布。分别为判别分析和进化神经网络(ENN)方法建立了30个分类模型,并比较了它们在相应数据集上的性能。enn在易故障、非易故障和总体分类上的较低错误率具有统计学意义。enn的鲁棒性来自于它们在使用的数据配置范围内的优越性能。有人建议,enn在其他软件可靠性问题领域也能发挥作用,在这些领域它们在很大程度上被忽视了。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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