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首页> 外文期刊>Frontiers in Computational Neuroscience >How the Brain Represents Language and Answers Questions? Using an AI System to Understand the Underlying Neurobiological Mechanisms
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How the Brain Represents Language and Answers Questions? Using an AI System to Understand the Underlying Neurobiological Mechanisms

机译:大脑如何表示语言并回答问题?使用AI系统了解潜在的神经生物学机制

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To understand the computations that underlie high-level cognitive processes we propose a framework of mechanisms that could in principle implement START, an AI program that answers questions using natural language. START organizes a sentence into a series of triplets, each containing three elements (subject, verb, object). We propose that the brain similarly defines triplets and then chunks the three elements into a spatial pattern. A complete sentence can be represented using up to 7 triplets in a working memory buffer organized by theta and gamma oscillations. This buffer can transfer information into long-term memory networks where a second chunking operation converts the serial triplets into a single spatial pattern in a network, with each triplet (with corresponding elements) represented in specialized subregions. The triplets that define a sentence become synaptically linked, thereby encoding the sentence in synaptic weights. When a question is posed, there is a search for the closest stored memory (having the greatest number of shared triplets). We have devised a search process that does not require that the question and the stored memory have the same number of triplets or have triplets in the same order. Once the most similar memory is recalled and undergoes 2-level dechunking, the sought for information can be obtained by element-by-element comparison of the key triplet in the question to the corresponding triplet in the retrieved memory. This search may require a reordering to align corresponding triplets, the use of pointers that link different triplets, or the use of semantic memory. Our framework uses 12 network processes; existing models can implement many of these, but in other cases we can only suggest neural implementations. Overall, our scheme provides the first view of how language-based question answering could be implemented by the brain.
机译:为了理解构成高级认知过程的基础的计算,我们提出了一个原则上可以实现START的机制框架,START是一个使用自然语言回答问题的AI程序。 START将一个句子组织成一系列的三胞胎,每个三胞胎包含三个元素(主题,动词,宾语)。我们建议大脑类似地定义三胞胎,然后将这三个元素分块成一个空间模式。一个完整的句子可以在由θ和γ振荡组织的工作存储缓冲区中使用多达7个三元组来表示。该缓冲区可以将信息传输到长期存储网络中,在此网络中,第二个分块操作会将串行三元组转换为网络中的单个空间模式,每个三元组(带有相应的元素)都在专门的子区域中表示。定义句子的三元组被突触链接,从而以突触权重对句子进行编码。提出问题时,将搜索最近的存储内存(共享三元组数量最多)。我们设计了一种搜索过程,该过程不需要问题和存储的内存具有相同数量的三元组或具有相同顺序的三元组。一旦调用了最相似的内存并进行了2级分块处理,就可以通过将问题中的键三元组与检索到的内存中的相应三元组逐元素比较来获取所需信息。此搜索可能需要重新排序以对齐对应的三胞胎,使用链接不同三胞胎的指针或使用语义记忆。我们的框架使用12个网络流程。现有模型可以实现其中的许多功能,但是在其他情况下,我们只能提出神经实现的建议。总体而言,我们的方案提供了关于大脑如何实现基于语言的问题解答的第一视图。

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