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首页> 外文期刊>Philosophical Transactions of the Royal Society of London, Series B. Biological Sciences >Structured sequence processing and combinatorial binding: neurobiologically and computationally informed hypotheses
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Structured sequence processing and combinatorial binding: neurobiologically and computationally informed hypotheses

机译:结构化序列处理和组合结合:神经生物学和计算上的假设

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Understanding how the brain forms representations of structured information distributed in time is a challenging endeavour for the neuroscientific community, requiring computationally and neurobiologically informed approaches. The neural mechanisms for segmenting continuous streams of sensory input and establishing representations of dependencies remain largely unknown, as do the transformations and computations occurring between the brain regions involved in these aspects of sequence processing. We propose a blueprint for a neurobiologically informed and informing computational model of sequence processing (entitled: Vector-symbolic Sequencing of Binding INstantiating Dependencies, or VS-BIND). This model is designed to support the transformation of serially ordered elements in sensory sequences into structured representations of bound dependencies, readily operates on multiple timescales, and encodes or decodes sequences with respect to chunked items wherever dependencies occur in time. The model integrates established vector symbolic additive and conjunctive binding operators with neurobiologically plausible oscillatory dynamics, and is compatible with modern spiking neural network simulation methods. We show that the model is capable of simulating previous findings from structured sequence processing tasks that engage fronto-temporal regions, specifying mechanistic roles for regions such as prefrontal areas 44/45 and the frontal operculum during interactions with sensory representations in temporal cortex. Finally, we are able to make predictions based on the configuration of the model alone that underscore the importance of serial position information, which requires input from time-sensitive cells, known to reside in the hippocampus and dorsolateral prefrontal cortex. This article is part of the theme issue 'Towards mechanistic models of meaning composition'.
机译:对于神经科学界来说,理解大脑如何形成时间分布的结构化信息的表示是一项具有挑战性的工作,需要计算和神经生物学方面的信息。分割连续的感觉输入流和建立依赖性表示的神经机制在很大程度上仍然未知,序列处理的这些方面涉及的大脑区域之间发生的转换和计算也是未知的。我们提出了一个序列处理的神经生物学信息和信息计算模型的蓝图(标题为:绑定实例化依赖的向量符号序列,或VS-BIND)。该模型旨在支持将感官序列中的序列有序元素转换为绑定依赖的结构化表示,易于在多个时间尺度上操作,并在依赖发生的任何时间点对分块项目的序列进行编码或解码。该模型将已建立的向量符号加法和合取结合算子与神经生物学上合理的振荡动力学相结合,并与现代尖峰神经网络模拟方法兼容。我们表明,该模型能够模拟涉及额叶-颞叶区域的结构化序列处理任务的先前发现,在与颞叶皮质中的感觉表征交互作用期间,指定前额叶区域44/45和额叶盖等区域的机械作用。最后,我们能够仅基于模型的配置进行预测,强调序列位置信息的重要性,这需要来自时间敏感细胞的输入,已知这些细胞位于海马和背外侧前额叶皮质。这篇文章是主题问题“走向意义构成的机械模型”的一部分。

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