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Unsupervised Hebbian learning by recurrent multilayer neural networks for temporal hierarchical pattern recognition

机译:通过反复多层神经网络进行暂时的Hebbian学习,用于时间分层模式识别

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Recurrent multilayer network structures and Hebbian learning are two essential features of biological neural networks. An artificial recurrent multilayer neural network that performs supervised Hebbian learning, called probabilistic associative memory (PAM), was recently proposed. PAM is a recurrent multilayer network of processing units (PUs), each processing unit comprising a group of novel artificial neurons, which generate spike trains. PUs are detectors and recognizers of the feature subvectors appearing in their receptive fields. In supervised learning by a PU, the label of the feature subvector is provided from outside PAM. Since the feature subvector may be shared by many causes and may contain parts from many causes, the label of the feature subvector is sometimes difficult to obtain, not to mention the cost, especially if there are many hidden layers and feedbacks. This paper presents an unsupervised learning scheme, which is Hebbian in the following sense: The strength of a synapse increases if the outputs of the presynaptic and postsynaptic neurons are identical and decreases otherwise. This unsupervised Hebbian learning capability makes PAM a good functional model of neuronal networks as well as a good learning machine for temporal hierarchical pattern recognition.
机译:经常性多层网络结构和Hebbian学习是生物神经网络的两个基本特征。最近提出了一个人工复发多层神经网络,用于执行监督的Hebbian学习,称为概率关联记忆(PAM)。 PAM是一种经常性的处理单元(PU)的多层网络,每个处理单元包括一组新型人工神经元,其产生尖峰列车。 PU是出现在其接受领域的特征子视频的探测器和识别器。通过PU的监督学习,从外部PAM提供特征子Vector的标签。由于特征子址可以由许多原因共享并且可以包含来自许多原因的部分,因此特征子址的标签有时难以获得,更不用说成本,特别是如果存在许多隐藏层和反馈。本文提出了一种无人监督的学习计划,即在以下意义上是Hebbian:如果突触前和后腹神经元的输出是相同的并且否则减少,则突触的强度会增加。这种无监督的Hebbian学习能力使PAM成为神经元网络的良好功能模型以及用于时间分层模式识别的良好学习机。

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