大语言模型:历史与社会文化视角。

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2024-03-18 DOI:10.1111/cogs.13430
Eugene Yu Ji
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引用次数: 0

摘要

这封信通过信息论、统计语言模型和社会人类学语言理论的视角,探讨了大型语言模型(LLMs)与认知科学之间错综复杂的历史和当代联系。大型语言模型的出现凸显了以信息为基础的统计学习理论在理解人类交流方面的持久意义。这些理论最初是在 20 世纪中期提出的,为整合计算科学、社会科学和人文科学提供了一个富有远见的框架,但在当时并未完全实现。随后,社会语言学和语言人类学的发展,尤其是 20 世纪 70 年代以来的发展,提供了批判性的视角和实证方法,既挑战了这一框架,也丰富了这一框架。这封信提出,从这一发展中衍生出的两个关键概念--元语用功能和索引性--为整合交际的语义、文本和语用、语境维度提供了富有成效的理论视角,而当代语言学硕士尚未完全实现这一整合。作者认为,当代认知科学正处于一个关键的十字路口,促进计算语言学、社会语言学和语言人类学以及认知和社会心理学之间的跨学科对话尤为必要。这种合作对于沟通人类交流和人机交互的计算、认知和社会文化方面至关重要,尤其是在大型语言和多模态模型以及以人为本的人工智能(AI)时代。
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Large Language Models: A Historical and Sociocultural Perspective

This letter explores the intricate historical and contemporary links between large language models (LLMs) and cognitive science through the lens of information theory, statistical language models, and socioanthropological linguistic theories. The emergence of LLMs highlights the enduring significance of information-based and statistical learning theories in understanding human communication. These theories, initially proposed in the mid-20th century, offered a visionary framework for integrating computational science, social sciences, and humanities, which nonetheless was not fully fulfilled at that time. The subsequent development of sociolinguistics and linguistic anthropology, especially since the 1970s, provided critical perspectives and empirical methods that both challenged and enriched this framework. This letter proposes that two pivotal concepts derived from this development, metapragmatic function and indexicality, offer a fruitful theoretical perspective for integrating the semantic, textual, and pragmatic, contextual dimensions of communication, an amalgamation that contemporary LLMs have yet to fully achieve. The author believes that contemporary cognitive science is at a crucial crossroads, where fostering interdisciplinary dialogues among computational linguistics, social linguistics and linguistic anthropology, and cognitive and social psychology is in particular imperative. Such collaboration is vital to bridge the computational, cognitive, and sociocultural aspects of human communication and human−AI interaction, especially in the era of large language and multimodal models and human-centric Artificial Intelligence (AI).

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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