集体预测编码假说:作为分散贝叶斯推理的符号出现

Tadahiro Taniguchi
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引用次数: 4

摘要

要理解符号系统(尤其是语言)的出现,就需要构建一个计算模型,该模型既能再现日常生活中的发展学习过程,也能再现符号在历史上出现的进化动态。本研究提出了集体预测编码(CPC)假说,该假说强调并模拟了通过与环境的物理互动形成内部表征与通过符号出现系统中的社会符号学互动分享和利用意义之间的相互依存关系。从预测编码的角度对整个系统的动态进行了理论化。这一假设的灵感来源于以概率生成模型和语言游戏(包括 Metropolis-Hastings 命名游戏)为基础的计算研究。因此,代理之间以分布式方式进行此类游戏,可以解释为多代理系统共享表征的分散贝叶斯推理。此外,本研究还探讨了 CPC 假设与自由能原理之间的潜在联系,认为符号的出现遵循了全社会的自由能原理。此外,本文还提供了一种新的解释,说明为什么大型语言模型既没有感觉器官,也没有身体,却似乎拥有基于经验的世界知识。本文回顾了过去研究符号涌现系统的方法,全面考察了之前的相关研究,并对基于 CPC 的泛化进行了讨论。本文强调了未来的挑战和潜在的跨学科研究途径。
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Collective predictive coding hypothesis: symbol emergence as decentralized Bayesian inference
Understanding the emergence of symbol systems, especially language, requires the construction of a computational model that reproduces both the developmental learning process in everyday life and the evolutionary dynamics of symbol emergence throughout history. This study introduces the collective predictive coding (CPC) hypothesis, which emphasizes and models the interdependence between forming internal representations through physical interactions with the environment and sharing and utilizing meanings through social semiotic interactions within a symbol emergence system. The total system dynamics is theorized from the perspective of predictive coding. The hypothesis draws inspiration from computational studies grounded in probabilistic generative models and language games, including the Metropolis–Hastings naming game. Thus, playing such games among agents in a distributed manner can be interpreted as a decentralized Bayesian inference of representations shared by a multi-agent system. Moreover, this study explores the potential link between the CPC hypothesis and the free-energy principle, positing that symbol emergence adheres to the society-wide free-energy principle. Furthermore, this paper provides a new explanation for why large language models appear to possess knowledge about the world based on experience, even though they have neither sensory organs nor bodies. This paper reviews past approaches to symbol emergence systems, offers a comprehensive survey of related prior studies, and presents a discussion on CPC-based generalizations. Future challenges and potential cross-disciplinary research avenues are highlighted.
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