基于函数依赖预处理的人工神经网络规则提取

S. Geva, M. T. Wong, M. Orlowski
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引用次数: 4

摘要

本文描述了一种通过函数依赖预处理从训练好的人工神经网络中提取符号规则的技术。RULEX (R. Andrews and S. Geva, 1994;1995),在R. Andrews等人(1995)最近的一项调查中被归类为从训练好的神经网络中提取规则的分解技术,用于从通过识别功能依赖关系进行预处理的数据中提取符号规则。识别功能依赖提供了几个优势。它可以显著减少计算负荷,减少衍生规则的数量和复杂性,并发现替代解决方案,否则由于隐式或显式程序偏见而被某些方法忽略。测试中使用了来自UCI机器学习数据库存储库的基准数据集。实验结果表明,加入功能依赖可以提高RULEX的预处理性能。与符号规则提取技术C4.5相比,将RULEX与功能依赖预处理相结合,获得了较好的规则质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rule extraction from trained artificial neural network with functional dependency preprocessing
The paper describes a technique to extract symbolic rules from a trained artificial neural network with functional dependency preprocessing. RULEX (R. Andrews and S. Geva, 1994; 1995), classified as a decompositional technique of rule extraction from trained neural network in a recent survey by R. Andrews et al. (1995), is used to extract symbolic rules from data that have been preprocessed by identification of functional dependency. The identification of functional dependency offers several advantages. It can lead to significant reductions in the computational load, to reduction in the number and complexity of derived rules and to the discovery of alternative solutions that would otherwise be ignored by some methods due to implicit or explicit procedural bias. Benchmark datasets from the UCI repository of machine learning databases are used in the testing. Experimental results indicate that by including functional dependency preprocessing performance of RULEX can be improved. Good rule quality is obtained by applying RULEX with functional dependency preprocessing when compared to symbolic rule extraction technique C4.5.
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