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Neural blackboard architectures of combinatorial structures in cognition

机译:认知组合结构的神经黑板架构

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Human cognition is unique in the way in which it relies on combinatorial (or compositional) structures. Language provides ample evidence for the existence of combinatorial structures, but they can also be found in visual cognition. To understand the neural basis of human cognition, it is therefore essential to understand how combinatorial structures can be instantiated in neural terms. In his recent book on the foundations of language, Jackendoff described four fundamental problems for a neural instantiation of combinatorial structures: the massiveness of the binding problem, the problem of 2, the problem of variables, and the transformation of combinatorial structures from working memory to long-term memory. This paper aims to show that these problems can be solved by means of neural "blackboard" architectures. For this purpose, a neural blackboard architecture for sentence structure is presented. In this architecture, neural structures that encode for words are temporarily bound in a manner that preserves the structure of the sentence. It is shown that the architecture solves the four problems presented by Jackendoff. The ability of the architecture to instantiate sentence structures is illustrated with examples of sentence complexity observed in human language performance. Similarities exist between the architecture for sentence structure and blackboard architectures for combinatorial structures in visual cognition, derived from the structure of the visual cortex. These architectures are briefly discussed, together with an example of a combinatorial structure in which the blackboard architectures for language and vision are combined. In this way, the architecture for language is grounded in perception. Perspectives and potential developments of the architectures are discussed.
机译:人类认知在依赖组合(或组成)结构的方式上是独特的。语言为组合结构的存在提供了充足的证据,但也可以在视觉认知中找到它们。为了理解人类认知的神经基础,因此必须了解如何以神经术语实例化组合结构。 Jackendoff在他最近的关于语言基础的书中描述了组合结构的神经实例化的四个基本问题:绑定问题的庞大性,2的问题,变量的问题以及组合结构从工作记忆到工作记忆的转变。长期记忆。本文旨在说明可以通过神经“黑板”架构解决这些问题。为此,提出了用于句子结构的神经黑板架构。在这种体系结构中,编码单词的神经结构以保留句子结构的方式临时绑定。结果表明,该体系结构解决了Jackendoff提出的四个问题。通过在人类语言表现中观察到的句子复杂度的示例,说明了体系结构实例化句子结构的能力。从视觉皮层的结构派生出来的句子结构的结构和视觉认知中的组合结构的黑板结构之间存在相似之处。简要讨论了这些体系结构,以及组合了语言和视觉黑板结构的组合结构示例。这样,语言的体系结构就建立在感知的基础上。讨论了体系结构的观点和潜在的发展。

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