Subspace Extracting Adaptive Cellular Network for Layered Architectures with Circular Boundaries

Mohit Garg, J. Dhar
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引用次数: 2

Abstract

An abstract interpretation of an adaptive neural network is where each cell is considered as an agent that has internal states and interaction rules along with a set of strategies that modulates its internal states and its interaction with neighboring agents. While the internal states are governed by the processing equation, the selection of strategies is governed by the learning equations. Adaptivity of agents as a collective behavior that perform subspace extraction is observed in many different areas like cell differentiation in multi-cellular organisms, smart fluids, synaptic plasticity in neuronal ensemble and being applied in other areas like economic strategies, social networks, vlsi designing etc and thus studies of such models for more complex architectures (other than traditionally layered) become very relevant for modeling real world applications. Since, no such widely accepted matrix notation for arbitrary graph exists, the study of such network structures is hindered.. In this paper, we study such a recursive cellular network for layered networks and its behavior when applied over a special class of layered architecture where the boundaries of the network are merged.
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圆形边界分层结构的子空间提取自适应细胞网络
自适应神经网络的一个抽象解释是,每个细胞被认为是一个具有内部状态和交互规则的智能体,以及一组调节其内部状态和与相邻智能体交互的策略。内部状态由加工方程控制,策略选择由学习方程控制。agent的适应性作为一种执行子空间提取的集体行为在许多不同的领域被观察到,如多细胞生物的细胞分化、智能流体、神经元集合中的突触可塑性,并被应用于其他领域,如经济策略、社会网络、大规模集成电路设计等,因此,研究更复杂的体系结构(而不是传统的分层)模型与建模现实世界的应用非常相关。由于没有这种被广泛接受的任意图的矩阵表示法,阻碍了这种网络结构的研究。在本文中,我们研究了这种递归细胞网络的分层网络及其应用于一类特殊的分层结构时的行为,其中网络边界是合并的。
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