Application of neural networks for software quality prediction using object-oriented metrics

M. Thwin, T. Quah
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引用次数: 328

Abstract

The paper presents the application of neural networks in software quality estimation using object-oriented metrics. Quality estimation includes estimating reliability as well as maintainability of software. Reliability is typically measured as the number of defects. Maintenance effort can be measured as the number of lines changed per class. In this paper, two kinds of investigation are performed: predicting the number of defects in a class; and predicting the number of lines change per class. Two neural network models are used: they are Ward neural network; and General Regression neural network (GRNN). Object-oriented design metrics concerning inheritance related measures, complexity measures, cohesion measures, coupling measures and memory allocation measures are used as the independent variables. GRNN network model is found to predict more accurately than Ward network model.
神经网络在面向对象度量软件质量预测中的应用
本文介绍了神经网络在面向对象的软件质量评价中的应用。质量评估包括软件的可靠性和可维护性评估。可靠性通常以缺陷的数量来衡量。维护工作可以通过每个类更改的行数来衡量。本文进行了两种类型的研究:预测一类缺陷的数量;并预测每类的行数变化。采用了两种神经网络模型:Ward神经网络;广义回归神经网络(GRNN)。采用面向对象的设计度量,包括继承相关度量、复杂性度量、内聚度量、耦合度量和内存分配度量作为自变量。GRNN网络模型的预测精度高于Ward网络模型。
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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