递归神经网络中有组织内部表征的生成

R. Kamimura
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引用次数: 0

摘要

提出了一种组织内部表示(隐藏单元模式)以增加递归神经网络信息理论冗余的方法。信息论冗余反映了隐藏单元模式的组织或结构程度。通过这种方法的表示,可以容易而明确地解释网络的机制。递归神经网络的一个问题是,随着网络中单元数量的增加,连接权值越小,而在隐藏单元上产生均匀或随机的活动值。因此,很难解释隐藏单位的含义。为了解决这个问题,我们使用了鲁梅尔哈特提出的复杂性术语。通过使用一个改进的复杂性术语,网络的连接可以被高度激活,这意味着连接可以取更大的绝对值。在对递归反向传播的复杂性项进行了简要的表述后,给出了三个实验结果——异或问题、否定问题和句子格式良好性问题
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generation of organized internal representation in recurrent neural networks
A method with which internal representations (hidden unit patterns) are organized so as to increase information-theoretical redundancy in recurrent neural networks is presented. The information-theoretical redundancy is supposed to reflect the degree of organization or structure in hidden unit patterns. The representation by this method is expected to make it possible to interpret a mechanism of networks easily and explicitly. One of the problems in recurrent neural networks is that connection weights are smaller as the number of units in networks is larger, while producing uniform or random activity values at hidden units. Thus, it is difficult to interpret the meaning of hidden units. To cope with this problem, a complexity term proposed by D.E. Rumelhart was used. By using a modified complexity term, connections of networks could be highly activated, meaning that the connections could take larger absolute values. After a brief formulation of recurrent backpropagation with the complexity term, three experimental results-the XOR problem, a negation problem, and a sentence well-formedness problem-are presented.<>
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