Network connectivity of neurons-feature detectors

Boris A. Galitsky
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Abstract

Studies the logical modelling of neural networks. The principles of feature representation and the mechanisms of the features' interaction in the following layers under the feature space formation have not previously been elucidated. Approaches connected with the syntactic theory of pattern recognition are suggested, in the sense that the symbolic manipulations are realized in our model of the network's actions. The layer of neuron-detectors is the first layer in the information processing pathway, where the transformation from quantitative to qualitative form, from the field of stimulus intensity to the layer distribution of neuron responses is accomplished. Each response encodes the presence of a revealed stimulus feature. In other words, if the receptive field of the primary feature detectors correspond to the physical field of the percepting value, encoded by a membrane potential or spike, then the receptive fields of the following layers represent the mutual location emerged at the previous layers. This paper addresses the question of how more complex features could be formed by the neurons of the following layers, coming from the primary features of the cell-detectors. The paper is based on the ultraproduct theory, the formalism of algebra and mathematical logic. The neuron network investigated accomplishes transformations according to the analogue-symbolic scheme, realizing a specific syntax of grammar, operating with such symbols, by the physical laws of the system described. The symbol representation of a signal cannot be reduced to its quantization in the general situation.<>
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神经元-特征检测器的网络连通性
研究神经网络的逻辑建模。在特征空间形成过程中,特征表示的原理和各层特征相互作用的机制尚未得到阐明。在我们的网络动作模型中实现了符号操作的意义上,提出了与模式识别的句法理论相关的方法。神经元-检测器层是信息处理通路的第一层,完成了从定量形式到定性形式、从刺激强度场到神经元响应层分布的转换。每个反应都编码了一个揭示的刺激特征的存在。换句话说,如果初级特征检测器的感受野对应于感知值的物理场,由膜电位或脉冲编码,则以下层的感受野代表在前一层出现的相互位置。本文从细胞检测器的主要特征出发,解决了以下层的神经元如何形成更复杂的特征的问题。本文以超积理论、代数的形式主义和数理逻辑为基础。所研究的神经元网络根据模拟符号方案完成转换,实现语法的特定语法,通过所描述的系统的物理定律与这些符号一起操作。在一般情况下,信号的符号表示不能简化为它的量化。
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