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A Neural Associative Pattern Classifier

机译:神经联想模式分类器

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摘要

In this work, we study the behaviour of the Bidirectional Associative Memory (BAM) in terms of the supporting neural structure, with a view to its possible improvements as auseful Pattern Classifier by means of class associations from unknown inputs, once mentioned classes have been previously defined by one or even more prototypes. The best results have been obtained by suitably choosing the training pattern pairs, the thresholds, and the activation functions of the network's neurones, by means of certain proposed methods described in the paper. In order to put forward the advantages of these proposed methods, the classifier has been applied on an especially popular hand-written character set as the well-known NIST#19 character database, and with one of the UCI's data bases. In all cases, the method led to a marked improvement in the performance achievable by a BAM, with a 0% error rate.
机译:在这项工作中,我们研究了双向联想记忆(BAM)在支持神经结构方面的行为,以期通过未知输入的类别关联将其作为有用的模式分类器进行可能的改进,以前曾提到过此类由一个或多个原型定义。通过本文中描述的某些建议方法,通过适当选择训练模式对,阈值和网络神经元的激活功能,可以获得最佳结果。为了提出这些建议方法的优点,已将分类器应用于一种特别流行的手写字符集,如众所周知的NIST#19字符数据库,并使用UCI的数据库之一。在所有情况下,该方法均可以显着提高BAM可以实现的性能,错误率为0%。

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