传播与真理,模仿与创新:孩子能做什么,大型语言和语言视觉模型(目前)做不到。

IF 10.5 1区 心理学 Q1 PSYCHOLOGY, MULTIDISCIPLINARY Perspectives on Psychological Science Pub Date : 2024-09-01 Epub Date: 2023-10-26 DOI:10.1177/17456916231201401
Eunice Yiu, Eliza Kosoy, Alison Gopnik
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引用次数: 0

摘要

关于大型语言模型、语言和视觉模型的许多讨论都集中在这些模型是否是智能代理上。我们提出了另一种观点。首先,我们认为这些人工智能模型是增强文化传播的文化技术,是高效而强大的模仿引擎。其次,我们通过测试人工智能模型是否可以用来发现新的工具和新的因果结构,并将其反应与人类儿童的反应进行对比,来探索人工智能模型可以告诉我们关于模仿和创新的什么。我们的工作是确定哪些特定的表现和能力,以及哪些类型的知识或技能可以从特定的学习技术和数据中获得的第一步。特别是,我们探索了通过对大规模语言数据的统计分析可以实现哪些类型的认知能力。至关重要的是,我们的发现表明,机器可能需要的不仅仅是大规模的语言和图像数据,才能实现幼儿所能产生的创新。
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Transmission Versus Truth, Imitation Versus Innovation: What Children Can Do That Large Language and Language-and-Vision Models Cannot (Yet).

Much discussion about large language models and language-and-vision models has focused on whether these models are intelligent agents. We present an alternative perspective. First, we argue that these artificial intelligence (AI) models are cultural technologies that enhance cultural transmission and are efficient and powerful imitation engines. Second, we explore what AI models can tell us about imitation and innovation by testing whether they can be used to discover new tools and novel causal structures and contrasting their responses with those of human children. Our work serves as a first step in determining which particular representations and competences, as well as which kinds of knowledge or skill, can be derived from particular learning techniques and data. In particular, we explore which kinds of cognitive capacities can be enabled by statistical analysis of large-scale linguistic data. Critically, our findings suggest that machines may need more than large-scale language and image data to allow the kinds of innovation that a small child can produce.

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来源期刊
Perspectives on Psychological Science
Perspectives on Psychological Science PSYCHOLOGY, MULTIDISCIPLINARY-
CiteScore
22.70
自引率
4.00%
发文量
111
期刊介绍: Perspectives on Psychological Science is a journal that publishes a diverse range of articles and reports in the field of psychology. The journal includes broad integrative reviews, overviews of research programs, meta-analyses, theoretical statements, book reviews, and articles on various topics such as the philosophy of science and opinion pieces about major issues in the field. It also features autobiographical reflections of senior members of the field, occasional humorous essays and sketches, and even has a section for invited and submitted articles. The impact of the journal can be seen through the reverberation of a 2009 article on correlative analyses commonly used in neuroimaging studies, which still influences the field. Additionally, a recent special issue of Perspectives, featuring prominent researchers discussing the "Next Big Questions in Psychology," is shaping the future trajectory of the discipline. Perspectives on Psychological Science provides metrics that showcase the performance of the journal. However, the Association for Psychological Science, of which the journal is a signatory of DORA, recommends against using journal-based metrics for assessing individual scientist contributions, such as for hiring, promotion, or funding decisions. Therefore, the metrics provided by Perspectives on Psychological Science should only be used by those interested in evaluating the journal itself.
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