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首页> 外文期刊>IEEE transactions on systems, man, and cybernetics. Part B >Reorganizing knowledge in neural networks: an explanatory mechanism for neural networks in data classification problems
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Reorganizing knowledge in neural networks: an explanatory mechanism for neural networks in data classification problems

机译:在神经网络中重组知识:数据分类问题中神经网络的一种解释机制

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摘要

We propose an explanatory mechanism for multilayered neural networks (NN). In spite of the effective learning capability as a uniform function approximator, the multilayered NN suffers from unreadability, i.e., it is difficult for the user to interpret or understand the "knowledge" that the NN has by looking at the connection weights and thresholds obtained by backpropagation (BP). This unreadability comes from the distributed nature of the knowledge representation in the NN. In this paper, we propose a method that reorganizes the distributed knowledge in the NN to extract approximate classification rules. Our rule extraction method is based on the analysis of the function that the NN has learned, rather than on the direct interpretation of connection weights as correlation information. More specifically, our method divides the input space into "monotonic regions" where a monotonic region is a set of input patterns that belongs to the same class with the same sensitivity pattern. Approximate classification rules are generated by projecting these monotonic regions.
机译:我们提出了一种多层神经网络(NN)的解释机制。尽管作为统一函数逼近器具有有效的学习能力,但多层NN仍存在无法读取的问题,即,用户很难通过查看连接权重和获得的阈值来解释或理解NN所具有的“知识”。反向传播(BP)。这种不可读取性来自NN中知识表示的分布式性质。在本文中,我们提出了一种重组神经网络中的分布式知识以提取近似分类规则的方法。我们的规则提取方法是基于对NN学习到的功能的分析,而不是直接将连接权重解释为相关信息。更具体地说,我们的方法将输入空间划分为“单调区域”,其中单调区域是一组属于相同类别,具有相同灵敏度模式的输入模式。通过投影这些单调区域来生成近似分类规则。

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