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The truth is in there: current issues in extracting rules from trained feedforward artificial neural networks

机译:事实是存在的:从经过训练的前馈人工神经网络中提取规则的当前问题

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A recognized impediment to the more widespread utilization of artificial neural networks (ANNs) is the absence of a capability to explain, in a human-comprehensible form, either the process by which a trained ANN arrives at a specific decision/result or, in general, the totality of knowledge embedded therein. There has been a proliferation of techniques aimed at redressing this situation and, in particular, for extracting the knowledge embedded in trained feedforward ANNs as sets of symbolic rules. However, if the dissemination of ideas in the field of ANN rule extraction is to proceed in a systematic manner, then it is essential that a rigorous taxonomy exists for categorizing the plethora of techniques being developed. This paper shows how one of the proposed schemas for categorizing ANN rule extraction techniques is able to accommodate such developments in the field. In addition attention is drawn to what are seen to be some of the key challenges in the area including the identification of factors which appear to limit what is actually achievable through the rule extraction process.
机译:公认的阻碍人工神经网络(ANN)广泛使用的障碍是,缺乏以人类易懂的形式来解释受过训练的人工神经网络得出特定决策/结果的过程的能力,或者通常来说,即其中嵌入的全部知识。为了解决这种情况,特别是为了提取嵌入在经过训练的前馈ANN中作为符号规则集的知识的技术已经激增。但是,如果要以系统的方式在ANN规则提取领域传播思想,则必须使用严格的分类法对正在开发的大量技术进行分类。本文显示了用于对ANN规则提取技术进行分类的拟议模式之一如何能够适应这种领域的发展。此外,还应注意该领域中的一些关键挑战,包括确定似乎限制了通过规则提取过程实际可实现的目标的因素。

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