Extracting fuzzy symbolic representation from artificial neural networks

M. Faifer, C. Janikow, K. Krawiec
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引用次数: 5

Abstract

The paper presents FUZZYTREPAN, a pedagogical approach to the problem of extracting comprehensible symbolic knowledge from trained artificial neural networks. This approach extends the previously proposed TREPAN method in two ways: it uses fuzzy representation in its knowledge extraction process (by means of fuzzy decision trees), and it uses additional heuristics in its process of generating artificial data. The paper describes the proposed approach in detail, and it presents its empirical evaluation on popular machine learning benchmarks.
从人工神经网络中提取模糊符号表示
本文提出了一种从训练好的人工神经网络中提取可理解的符号知识的教学方法FUZZYTREPAN。该方法在两个方面扩展了先前提出的TREPAN方法:在其知识提取过程中使用模糊表示(通过模糊决策树),并在其生成人工数据的过程中使用附加的启发式方法。本文详细描述了所提出的方法,并在流行的机器学习基准上给出了它的经验评估。
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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