语音和语言编码的神经动力学:发展程序、知觉分组和短期记忆的竞争。

Human neurobiology Pub Date : 1986-01-01
M Cohen, S Grossberg
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引用次数: 0

摘要

描述了观察者如何将语音流解析为上下文敏感的语言表示的计算理论。它展示了如何将事件的时间列表分成统一的表示,如何根据新出现的项目所携带的信息重新组织过去项目子列表的感知分组,以及项目信息和时间顺序信息如何绑定在一起,形成上下文敏感代码。这些语言单位是由于大量神经细胞之间的细胞间相互作用而产生的涌现特性。控制神经网络可以通过神经元发育的简单规则产生:沿空间梯度随机生长的连接,依赖于活动的自相似细胞生长,以及对保守突触位点的竞争。在这些网络中,对时间演化活动模式的空间频率分析导致短期记忆中不适当列表编码的竞争性掩蔽。神经元服从膜方程进行分流反复的中心-离-环绕相互作用。该网络体现了序列掩蔽原则、长期记忆不变性原则和自相似生长原则等设计原则。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural dynamics of speech and language coding: developmental programs, perceptual grouping, and competition for short-term memory.

A computational theory of how an observer parses a speech stream into context-sensitive language representations is described. It is shown how temporal lists of events can be chunked into unitized representations, how perceptual groupings of past item sublists can be reorganized due to information carried by newly occurring items, and how item information and temporal order information are bound together into context-sensitive codes. These language units are emergent properties due to intercellular interactions among large numbers of nerve cells. The controlling neural networks can arise through simple rules of neuronal development: random growth of connections along spatial gradients, activity-dependent self-similar cell growth, and competition for conserved synaptic sites. Within these networks, a spatial frequency analysis of temporally evolving activity patterns leads to competitive masking of inappropriate list encodings in short term memory. The neurons obey membrane equations undergoing shunting recurrent on-center off-surround interactions. Several design principles are embodied by the networks, such as the sequence masking principle, the long-term memory invariance principle, and the principle of self-similar growth.

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