使用神经网络的程序分类

F. Kurfess, L. Welch
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引用次数: 4

摘要

本文描述了一些基于神经网络在项目质量评估中的应用的实验,特别是与遗留系统的再工程相关的实验。我们使用Kohonen网络或自组织地图对程序进行分类:具有相似特征的程序在二维邻域中分组在一起,而不相似的程序则位于很远的地方。反向传播网络用于泛化目的:基于一组示例程序,其相关方面已经被评估,我们希望获得这些评估到新程序的外推。这些调查的基础是以各种依赖关系图的形式对程序进行中间表示,捕捉程序的本质。以前,已经开发了一组指标,以在这种中间表示的基础上对程序进行评估。然而,中间表示的哪些参数与特定度量相关并不总是很清楚。神经网络的分类和泛化能力被用来改进或验证参数的选择,甚至可能启动额外指标的开发。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Categorization of programs using neural networks
The paper describes some experiments based on the use of neural networks for assistance in the quality assessment of programs, especially in connection with the reengineering of legacy systems. We use Kohonen networks, or self-organizing maps, for the categorization of programs: programs with similar features are grouped together in a two-dimensional neighbourhood, whereas dissimilar programs are located far apart. Backpropagation networks are used for generalization purposes: based on a set of example programs whose relevant aspects have already been assessed, we would like to obtain an extrapolation of these assessments to new programs. The basis for these investigation is an intermediate representation of programs in the form of various dependency graphs, capturing the essentials of the programs. Previously, a set of metrics has been developed to perform an assessment of programs on the basis of this intermediate representation. It is not always clear, however, which parameters of the intermediate representation are relevant for a particular metric. The categorization and generalization capabilities of neural networks are employed to improve or verify the selection of parameters, and might even initiate the development of additional metrics.
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