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一种用于联想记忆的分层神经网络模型。

A hierarchical neural network model for associative memory.

作者信息

Fukushima K

出版信息

Biol Cybern. 1984;50(2):105-13. doi: 10.1007/BF00337157.

Abstract

A hierarchical neural network model with feedback interconnections, which has the function of associative memory and the ability to recognize patterns, is proposed. The model consists of a hierarchical multi-layered network to which efferent connections are added, so as to make positive feedback loops in pairs with afferent connections. The cell-layer at the initial stage of the network is the input layer which receives the stimulus input and at the same time works as an output layer for associative recall. The deepest layer is the output layer for pattern-recognition. Pattern-recognition is performed hierarchically by integrating information by converging afferent paths in the network. For the purpose of associative recall, the integrated information is again distributed to lower-order cells by diverging efferent paths. These two operations progress simultaneously in the network. If a fragment of a training pattern is presented to the network which has completed its self-organization, the entire pattern will gradually be recalled in the initial layer. If a stimulus consisting of a number of training patterns superposed is presented, one pattern gradually becomes predominant in the recalled output after competition between the patterns, and the others disappear. At about the same time when the recalled pattern reaches a steady state in the initial layer, in the deepest layer of the network, a response is elicited from the cell corresponding to the category of the finally-recalled pattern. Once a steady state has been reached, the response of the network is automatically extinguished by inhibitory signals from a steadiness-detecting cell.(ABSTRACT TRUNCATED AT 250 WORDS)

摘要

提出了一种具有反馈互连的分层神经网络模型,该模型具有联想记忆功能和模式识别能力。该模型由一个分层多层网络组成,在该网络中添加了传出连接,以便与传入连接成对形成正反馈回路。网络初始阶段的细胞层是输入层,它接收刺激输入,同时作为联想回忆的输出层。最深层是模式识别的输出层。模式识别通过在网络中汇聚传入路径来整合信息,从而分层进行。为了进行联想回忆,整合后的信息通过发散的传出路径再次分布到低阶细胞。这两个操作在网络中同时进行。如果将训练模式的一个片段呈现给已经完成自组织的网络,整个模式将在初始层逐渐被回忆起来。如果呈现一个由多个叠加的训练模式组成的刺激,在模式之间的竞争之后,一个模式在回忆输出中逐渐占主导地位,其他模式则消失。在初始层中回忆的模式达到稳定状态的大约同时,在网络的最深层,对应于最终回忆模式类别的细胞会引发反应。一旦达到稳定状态,网络的反应会被来自稳定性检测细胞的抑制信号自动消除。(摘要截于250字)

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