人工机构和大型语言模型

Maud Van Lier, Gorka Muñoz-Gil
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摘要

大型语言模型(LLMs)的出现,引发了关于能否以人工方式实现代理的哲学争论。在这项工作中,我们提出了一个理论模型,可用作人工代理的阈值概念,从而为这场辩论做出了贡献。该模型将代理定义为一个系统,其行动和目标总是受到由代理的可访问历史、其适应性剧目及其外部环境组成的动态因素框架的影响。这个框架反过来又受到代理所采取的行动和形成的目标的影响。在该模型的帮助下,我们可以看出最先进的 LLMs 还不是代理,但其中的一些元素暗示了未来的发展方向。本文认为,Park 等人(2023 年)提出的代理架构与 Boiko 等人(2023 年)提出的 "科学家"(Coscientist)等模块的结合使用,有可能成为以人工方式实现代理的一种方法。在本文的最后,我们反思了在构建这种人工代理时可能面临的障碍,并提出了未来研究的可能方向。
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Artificial Agency and Large Language Models
The arrival of Large Language Models (LLMs) has stirred up philosophical debates about the possibility of realizing agency in an artificial manner. In this work we contribute to the debate by presenting a theoretical model that can be used as a threshold conception for artificial agents. The model defines agents as systems whose actions and goals are always influenced by a dynamic framework of factors that consists of the agent's accessible history, its adaptive repertoire and its external environment. This framework, in turn, is influenced by the actions that the agent takes and the goals that it forms. We show with the help of the model that state-of-the-art LLMs are not agents yet, but that there are elements to them that suggest a way forward. The paper argues that a combination of the agent architecture presented in Park et al. (2023) together with the use of modules like the Coscientist in Boiko et al. (2023) could potentially be a way to realize agency in an artificial manner. We end the paper by reflecting on the obstacles one might face in building such an artificial agent and by presenting possible directions for future research.
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