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首页> 外文期刊>International Journal of Neural Systems >GENERALIZATION OF FEATURES IN THE ASSEMBLY NEURAL NETWORKS
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GENERALIZATION OF FEATURES IN THE ASSEMBLY NEURAL NETWORKS

机译:装配神经网络中的特征的广义化

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摘要

The purpose of the paper is an experimental study of the formation of class descriptions, taking place during learning, in assembly neural networks. The assembly neural network is artificially partitioned into several sub-networks according to the number of classes that the network has to recognize. The features extracted from input data are represented in neural column structures of the sub-networks. Hebbian neural assemblies are formed in the column structure of the sub-networks by weight adaptation. A specific class description is formed in each sub-network of the assembly neural network due to intersections between the neural assemblies. The process of formation of class descriptions in the sub-networks is interpreted as feature generalization. A set of special experiments is performed to study this process, on a task of character recognition using the MNIST database.
机译:本文的目的是对在组装神经网络中学习期间进行的类描述的形成进行实验研究。根据网络必须识别的类的数量,将装配神经网络人为地分为几个子网络。从输入数据中提取的特征在子网的神经列结构中表示。通过权重调整,在子网络的列结构中形成了Hebbian神经组件。由于神经组件之间的交叉,在组件神经网络的每个子网络中都形成了特定的类描述。子网中类描述的形成过程被解释为特征概括。在使用MNIST数据库进行字符识别的任务上,执行了一组特殊实验来研究此过程。

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