首页> 外国专利> device for cumulative learning internal representations in an n - dimensional 'coulomb' network.

device for cumulative learning internal representations in an n - dimensional 'coulomb' network.

机译:用于在n维“库仑”网络中累积学习内部表示的设备。

摘要

A learning algorithm for the N-dimensional Coulomb network is disclosed which is applicable to multi-layer networks. The central concept is to define a potential energy of a collection of memory sites. Then each memory site is an attractor of other memory sites. With the proper definition of attractive and repulsive potentials between various memory sites, it is possible to minimize the energy of the collection of memories. By this method, internal representations may be "built-up" one layer at a time. Following the method of Bachmann et. al. a system is considered in which memories of events have already been recorded in a layer of cells. A method is found for the consolidation of the number of memories required to correctly represent the pattern environment. This method is shown to be applicable to a supervised learning paradigm in which pairs of input and output patterns are presented sequentially to the network. The resulting learning procedure develops internal representations in an incremental or cumulative fashion, from the layer closest to the input, to the output layer.
机译:公开了适用于多层网络的用于N维库仑网络的学习算法。中心概念是定义存储位置集合的势能。然后,每个内存站点都是其他内存站点的吸引者。通过正确定义各个存储位置之间的吸引和排斥电位,可以最大程度地减少存储存储器的能量。通过这种方法,内部表示可以一次“构建”一层。按照巴赫曼等人的方法。等考虑一种系统,其中事件的记忆已经记录在一个单元层中。找到一种用于合并正确表示模式环境所需的存储器数量的方法。该方法显示适用于有监督的学习范式,在该范式中,成对的输入和输出模式顺序地呈现给网络。最终的学习过程以增量或累积的方式开发内部表示,从最接近输入的层到输出层。

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