Brain-inspired probabilistic generative model for double articulation analysis of spoken language

Akira Taniguchi, Maoko Muro, Hiroshi Yamakawa, T. Taniguchi
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引用次数: 1

Abstract

The human brain, among its several functions, analyzes the double articulation structure in spoken language, i.e., double articulation analysis (DAA). A hierarchical structure in which words are connected to form a sentence and words are composed of phonemes or syllables is called a double articulation structure. Where and how DAA is performed in the human brain has not been established, although some insights have been obtained. In addition, existing computational models based on a probabilistic generative model (PGM) do not incorporate neuroscientific findings, and their consistency with the brain has not been previously discussed. This study compared, mapped, and integrated these existing computational models with neuroscientific findings to bridge this gap, and the findings are relevant for future applications and further research. This study proposes a PGM for a DAA hypothesis that can be realized in the brain based on the outcomes of several neuroscientific surveys. The study involved (i) investigation and organization of anatomical structures related to spoken language processing, and (ii) design of a PGM that matches the anatomy and functions of the region of interest. Therefore, this study provides novel insights that will be foundational to further exploring DAA in the brain.
语音双重发音分析的脑启发概率生成模型
人脑在其多种功能中,分析口语中的双重发音结构,即双重发音分析(DAA)。单词连接成句子,单词由音素或音节组成的层次结构被称为双重发音结构。尽管已经获得了一些见解,但DAA在人脑中的位置和方式尚未确定。此外,现有的基于概率生成模型(PGM)的计算模型并没有纳入神经科学的发现,而且它们与大脑的一致性之前也没有被讨论过。这项研究将这些现有的计算模型与神经科学的发现进行了比较、映射和整合,以弥合这一差距,这些发现与未来的应用和进一步的研究有关。本研究基于几项神经科学调查的结果,提出了一种可以在大脑中实现的DAA假设的PGM。该研究包括(i)调查和组织与口语处理相关的解剖结构,以及(ii)设计与感兴趣区域的解剖和功能相匹配的PGM。因此,这项研究提供了新的见解,将为进一步探索大脑中的DAA奠定基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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