Toward a Thermodynamics of Meaning

Jonathan Scott Enderle
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Abstract

As language models such as GPT-3 become increasingly successful at generating realistic text, questions about what purely text-based modeling can learn about the world have become more urgent. Is text purely syntactic, as skeptics argue? Or does it in fact contain some semantic information that a sufficiently sophisticated language model could use to learn about the world without any additional inputs? This paper describes a new model that suggests some qualified answers to those questions. By theorizing the relationship between text and the world it describes as an equilibrium relationship between a thermodynamic system and a much larger reservoir, this paper argues that even very simple language models do learn structural facts about the world, while also proposing relatively precise limits on the nature and extent of those facts. This perspective promises not only to answer questions about what language models actually learn, but also to explain the consistent and surprising success of cooccurrence prediction as a meaning-making strategy in AI.
走向意义的热力学
随着GPT-3等语言模型在生成真实文本方面越来越成功,关于纯粹基于文本的建模可以了解世界的问题变得更加紧迫。文本是否像怀疑论者所说的那样纯粹是句法性的?或者它实际上包含一些语义信息,一个足够复杂的语言模型可以使用这些信息来了解这个世界,而不需要任何额外的输入?本文描述了一个新的模型,为这些问题提供了一些合格的答案。通过将文本和世界之间的关系理论化,它描述了一个热力学系统和一个更大的水库之间的平衡关系,本文认为,即使是非常简单的语言模型也能了解世界的结构性事实,同时也对这些事实的性质和范围提出了相对精确的限制。这一观点不仅可以回答语言模型实际学习的问题,还可以解释协同预测作为人工智能的一种意义制定策略的持续和惊人的成功。
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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