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Extracting Rules from Neural Networks by Pruning and Hidden-Unit Splitting

机译:通过修剪和隐藏单元拆分从神经网络中提取规则

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摘要

An algorithm for extracting rules from a standard three-layer feedforward neural network is proposed. The trained network is first pruned not only to remove redundant connections in the network but, more important, to detect the relevant inputs. The algorithm generates rules from the pruned network by considering only a small number of activation values at the hidden units. If the number of inputs connected to a hidden unit is sufficiently small, then rules that describe how each of its activation values is obtained can be readily generated. Otherwise the hidden unit will be split and treated as output units, with each output unit corresponding to an activation value. A hidden layer is inserted and a new subnetwork is formed, trained, and pruned. This process is repeated until every hidden unit in the network has a relatively small number of input units connected to it. Examples on how the proposed algorithm works are shown using real-world data arising from molecular biology and signal processing. Our results show that for these complex problems, the algorithm can extract reasonably compact rule sets that have high predictive accuracy rates.
机译:提出了一种从标准的三层前馈神经网络中提取规则的算法。首先修剪经过训练的网络,不仅除去网络中的冗余连接,而且更重要的是检测相关的输入。该算法通过考虑隐藏单元中的少量激活值,从修剪后的网络生成规则。如果连接到隐藏单元的输入数量足够少,则可以轻松生成描述如何获得其每个激活值的规则。否则,隐藏单元将被拆分并视为输出单元,每个输出单元对应一个激活值。插入一个隐藏层,并形成,训练和修剪一个新的子网。重复此过程,直到网络中每个隐藏的单元都连接了相对较少的输入单元。使用分子生物学和信号处理产生的真实数据显示了有关所提出算法如何工作的示例。我们的结果表明,对于这些复杂的问题,该算法可以提取具有较高预测准确率的合理紧凑的规则集。

著录项

  • 来源
    《Neural computation》 |1997年第1期|205-225|共21页
  • 作者

    Setiono R;

  • 作者单位

    Department of Information Systems and Computer Science, National University of Singapore, Kent Ridge, Singapore 0511, Republic of Singapore;

  • 收录信息 美国《科学引文索引》(SCI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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