使用符号算法从神经网络中提取规则:初步结果

C. R. Milaré, A. de Carvalho, M. C. Monard
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引用次数: 6

摘要

尽管人工神经网络(ann)在聚类、模式识别、动态系统控制和预测等问题上得到了令人满意的应用,但它仍然存在很大的局限性。其中之一是,诱导的概念表示通常不为人类所理解。已经提出了几种技术来从训练好的人工神经网络中提取有意义的知识。本文提出使用机器学习社区常用的符号学习算法从训练过的人工神经网络中提取符号表示。所提出的过程类似于Trepan算法(Craven, 1996),它从训练过的人工神经网络中提取可理解的符号表示(决策树)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extracting rules from neural networks using symbolic algorithms: preliminary results
Although Artificial Neural Networks (ANNs) have been satisfactorily employed in several problems, such as clustering, pattern recognition, dynamic systems control and prediction, they still suffer from significant limitations. One of them is that the induced concept representation is not usually comprehensible to humans. Several techniques have been suggested to extract meaningful knowledge from trained ANNs. This paper proposes the use of symbolic learning algorithms, commonly used by the Machine Learning community, to extract symbolic representations from trained ANNs. The procedure proposed is similar to that used by the Trepan algorithm (Craven, 1996), which extracts comprehensible, symbolic representations (decision trees) from trained ANNs.
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