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Using a Modified Counter-Propagation Algorithm to Classify Conjoint Data

机译:使用改进的对向传播算法对联合数据进行分类

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摘要

Conjoint data is data in which the classes abut but do not overlap. It is difficult to determine the boundary between the classes as there are no inherent clusters in conjoint data and as a result traditional classification methods, such as counter propagation networks, may under perform. This paper describes a modified counter propagation network that is able to refine the boundary definition and so perform better when classifying conjoint data. The efficiency with which it uses the network resources suggests that it is worthy of consideration for classifying all kinds of data.
机译:联合数据是类别相邻但不重叠的数据。很难确定类之间的边界,因为联合数据中没有固有的簇,因此可能无法执行传统的分类方法(例如反向传播网络)。本文介绍了一种改进的计数器传播网络,该网络能够完善边界定义,因此在对联合数据进行分类时表现更好。它使用网络资源的效率表明,在对各种数据进行分类时值得考虑。

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