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Modelling of syntactical processing in the cortex

机译:皮层句法处理的建模

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摘要

Probably the hardest test for a theory of brain function is the explanation of language processing in the human brain, in particular the interplay of syntax and semantics. Clearly such an explanation can only be very speculative, because there are essentially no animal models and it is hard to study detailed neural processing in humans. The approach presented in this paper uses well established basic neural mechanisms in a plausible global network architecture that is formulated essentially in terms of cortical areas and their intracortical and corticocortical interconnections. The neural implementation of this system shows that the comparatively intricate logical task of understanding semantico-syntactical structures can be mastered by a neural network architecture. The system presented also shows additional context awareness, in particular the model is able to correct ambiguous input to a certain degree, e.g. the input “bot show/lift green wall” with an artificial ambiguity between “show” and “lift” is correctly interpreted as “bot show green wall” since a wall is not liftable. Furthermore, the system is able to learn new object words during runtime.
机译:关于脑功能理论的最困难的考验可能是对人脑语言处理的解释,特别是语法和语义的相互作用。显然,这种解释只能是推测性的,因为基本上没有动物模型,而且很难研究人类的详细神经处理。本文提出的方法在合理的全球网络体系结构中使用了已建立的基本神经机制,该体系基本上是根据皮质区域及其皮质内和皮质与皮质之间的相互关系制定的。该系统的神经实现表明,可以通过神经网络体系结构来掌握理解语义-句法结构的相对复杂的逻辑任务。所呈现的系统还示出了附加的情境感知,特别是该模型能够在一定程度上校正歧义输入,例如,用户输入的内容。输入“机器人表演/举升绿色墙”在“表演”和“举升”之间存在人为的歧义,因为墙壁不可举升,因此正确地解释为“机器人表演/举起绿色墙”。此外,该系统能够在运行时学习新的目标词。

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