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Dynamical System Manifolds and Pattern Classification

机译:动力系统流形和模式分类

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摘要

A novel method of neural network for classification is presented. The neural network consists of order parameters each of those corresponds to an unique stored prototype. These parameters connected to each other by the matrix of weights which can be predetermined accordingly to the required partition of the whole set of prototypes into classes or subsets. The subsets may intersects if any prototype belongs to several classes. The classification performs via the temporal competition between subsets of order parameters. This leads to the representation of attractive manifolds in the phase space, when each manifold corresponds to a subset.
机译:提出了一种新的神经网络分类方法。神经网络由顺序参数组成,每个顺序参数都对应一个唯一存储的原型。这些参数通过权重矩阵相互连接,权重矩阵可以根据将整个原型集合划分为类或子集所需的预先确定。如果任何原型属于几个类,则子集可能相交。该分类通过顺序参数子集之间的时间竞争来执行。当每个歧管对应一个子集时,这导致相空间中有吸引力的歧管的表示。

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