论文标题
建立类似人类的沟通智能:扎根的视角
Building Human-like Communicative Intelligence: A Grounded Perspective
论文作者
论文摘要
现代人工智能(AI)系统在从图像分类到策略游戏的各种任务上都表现出色,甚至在许多领域中都表现出色。然而,在最近十年的语言学习取得了惊人的进步之后,AI系统似乎无法反映出人类交流能力的重要方面的天花板。与人类的学习者不同,交流AI系统通常无法系统地概括为新数据,遇到样本效率低下,无法捕获常识性语义知识,并且不会转化为现实世界的交流情况。认知科学提供了一些有关AI如何从这一点前进的见解。本文的目的是:(1)提出,基于本土主义和象征性范式的认知启发的AI方向缺乏指导现代AI进展的必要证明和具体性,(2)阐明了一种替代方案,“扎根”,“扎根”,透视AI的透视,启发了AID的研究,并构成了嵌入式(4),并构成了(4)。我回顾了认知科学研究界的4E研究界的结果,以区分自然主义学习条件的主要方面,这些条件在人类语言发展中起着因果作用。然后,我使用此分析来提出一个可实施的,可实施的组件列表,用于构建“接地”语言智能。这些组件包括在感知行动周期中体现机器,为代理提供积极的探索机制,以便它们可以构建自己的课程,从而使代理可以逐步发展运动能力以促进零碎的语言发展,并使代理商从身体和社交环境中赋予了自适应反馈。我希望这些想法可以将AI研究引导到建造机器,从而通过他们在世界上的经验来发展类似人类的语言能力。
Modern Artificial Intelligence (AI) systems excel at diverse tasks, from image classification to strategy games, even outperforming humans in many of these domains. After making astounding progress in language learning in the recent decade, AI systems, however, seem to approach the ceiling that does not reflect important aspects of human communicative capacities. Unlike human learners, communicative AI systems often fail to systematically generalize to new data, suffer from sample inefficiency, fail to capture common-sense semantic knowledge, and do not translate to real-world communicative situations. Cognitive Science offers several insights on how AI could move forward from this point. This paper aims to: (1) suggest that the dominant cognitively-inspired AI directions, based on nativist and symbolic paradigms, lack necessary substantiation and concreteness to guide progress in modern AI, and (2) articulate an alternative, "grounded", perspective on AI advancement, inspired by Embodied, Embedded, Extended, and Enactive Cognition (4E) research. I review results on 4E research lines in Cognitive Science to distinguish the main aspects of naturalistic learning conditions that play causal roles for human language development. I then use this analysis to propose a list of concrete, implementable components for building "grounded" linguistic intelligence. These components include embodying machines in a perception-action cycle, equipping agents with active exploration mechanisms so they can build their own curriculum, allowing agents to gradually develop motor abilities to promote piecemeal language development, and endowing the agents with adaptive feedback from their physical and social environment. I hope that these ideas can direct AI research towards building machines that develop human-like language abilities through their experiences with the world.