关联数据库检索的反向传播网络性能

V. Cherkassky, N. Vassilas
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引用次数: 28

摘要

反向传播网络已经成功地用于执行各种输入-输出映射任务,用于识别、泛化和分类。尽管这种方法很受欢迎,但实际上我们对它的饱和/容量一无所知,更一般地说,我们对它作为联想记忆的性能一无所知。作者使用关联数据库检索作为一个原始的应用领域来解决这些问题。实验结果表明,网络拓扑(隐藏单元的数量)、数据表示(编码)和学习参数的选择对召回质量和网络容量有非常显著的影响。基于他们的结果和反向传播学习不是递归的事实,作者得出结论,反向传播网络可以主要用作只读联想记忆,而对于读写联想记忆来说,这是一个糟糕的选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance of back propagation networks for associative database retrieval
Back-propagation networks have been successfully used to perform a variety of input-output mapping tasks for recognition, generalization, and classification. In spite of this method's popularity, virtually nothing is known about its saturation/capacity and, in more general terms, about its performance as an associative memory. The authors address these issues using associative database retrieval as an original application domain. Experimental results show that the quality of recall and the network capacity are very significantly affected by the network topology (the number of hidden units), data representation (encoding), and the choice of learning parameters. On the basis of their results and the fact that back-propagation learning is not recursive, the authors conclude that back-propagation networks can be used mainly as read-only associative memories and represent a poor choice for read-and-write associative memories.<>
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