论文标题

大脑建模的新想法7

New Ideas for Brain Modelling 7

论文作者

Greer, Kieran

论文摘要

本文首先通过创建两个系统,然后将它们统一在相同的结构上统一,从而更新认知模型。它仅在语义级别表示信息,其中标记的模式汇总为“类型 - 匹配”表单。据描述,聚合可用于匹配具有潜在功能不同的区域,因此使结构具有所需的灵活性。理论是,如果该模型存储可以以一致的方式转移的信息,那么这将导致知识和一定程度的智力。作为设计的一部分,模式必须变得独特,并且通过共享的聚合结构通过独特的路径实现。整体层次结构关系还有助于通过本地反馈来定义独特性,甚至可能是行动潜力。就其提议的功能而言,较早的模型仍然是一致的,但是某些架构边界已被移动以更紧密地匹配它们。在模式优化和类似树状的聚合之后,两个主要模型仅在其上部,更智能的水平上有所不同。一个为相互包容或独家模式组和序列提供了命题逻辑,而另一个提供了由节点类型构建的行为脚本。可以看出,这两种观点是免费的,并且可以对行为以及可能被选中的记忆进行一些控制。

This paper updates the cognitive model, firstly by creating two systems and then unifying them over the same structure. It represents information at the semantic level only, where labelled patterns are aggregated into a 'type-set-match' form. It is described that the aggregations can be used to match across regions with potentially different functionality and therefore give the structure a required amount of flexibility. The theory is that if the model stores information which can be transposed in consistent ways, then that will result in knowledge and some level of intelligence. As part of the design, patterns have to become distinct and that is realised by unique paths through shared aggregated structures. An ensemble-hierarchy relation also helps to define uniqueness through local feedback that may even be an action potential. The earlier models are still consistent in terms of their proposed functionality, but some of the architecture boundaries have been moved to match them up more closely. After pattern optimisation and tree-like aggregations, the two main models differ only in their upper, more intelligent level. One provides a propositional logic for mutually inclusive or exclusive pattern groups and sequences, while the other provides a behaviour script that is constructed from node types. It can be seen that these two views are complimentary and would allow some control over behaviours, as well as memories, that might get selected.

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