作为大脑模型的概念-价值网络

IF 1.6 Q3 CLINICAL NEUROLOGY
NeuroSci Pub Date : 2024-11-07 DOI:10.3390/neurosci5040039
Kieran Greer
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引用次数: 0

摘要

本文提出了一个统计框架,用于描述类脑模型的物理实体和概念实体之间的关系。论文将特征和概念实例联系起来,认为特征可以是电线;当然,化学连接也是可能的。根据这一观点,连接的实际长度很重要,因为它与发射率和神经元同步有关,但信号类型并不那么重要。论文随后提出,概念是连接特征集的神经元群,而概念实例则由这些神经元群的化学信号决定。因此,特征成为神经系统的静态横向框架,而概念则是这些特征的纵向互连组合。在功能方面,神经元被认为是功能性的,而更多的横向记忆结构甚至可以是神经胶质。这也表明,特征可以是分布的实体,而不是集中在一个区域。另一个方面可能是信号 "断裂",它将模式分隔开来,可能有助于神经结合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Concept-Value Network as a Brain Model.

This paper suggests a statistical framework for describing the relations between the physical and conceptual entities of a brain-like model. Features and concept instances are put into context, where the paper suggests that features may be the electrical wiring; although, chemical connections are also possible. With this idea, the actual length of the connection is important, because it is related to firing rates and neuron synchronization, but the signal type is less important. The paper then suggests that concepts are neuron groups that link feature sets and concept instances are determined by chemical signals from those groups. Therefore, features become the static horizontal framework of the neural system and concepts are vertically interconnected combinations of these. With regards to functionality, the neuron is then considered to be functional, and the more horizontal memory structures can even be glial. This would also suggest that features can be distributed entities and not concentrated to a single area. Another aspect could be signal 'breaks' that compartmentalise a pattern and may help with neural binding.

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