新兴语言调查

Jannik Peters, Constantin Waubert de Puiseau, Hasan Tercan, Arya Gopikrishnan, Gustavo Adolpho Lucas De Carvalho, Christian Bitter, Tobias Meisen
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摘要

新兴语言领域是人工智能领域的一个新的研究领域,特别是在多代理强化学习的背景下。尽管研究新兴语言的概念并不新鲜,但早期的研究方法主要关注解释人类语言的形成,很少考虑其对人工智能的潜在作用。相比之下,基于强化学习的研究旨在开发人工智能的交际能力,这种能力可与人类语言相媲美,甚至更胜一筹。因此,它们超越了自然语言处理研究中常见的学习统计表征。这引发了一系列基本问题,从语言出现的前提条件到衡量语言成功与否的标准。本文针对这些问题,对 181 篇有关人工智能中出现语言的科学出版物进行了全面评述。其目的是为对该领域感兴趣或精通该领域的研究人员提供参考。因此,本文的主要贡献在于对流行术语的定义和概述、对现有评估方法和指标的分析,以及对已发现的研究空白的描述。
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A Survey on Emergent Language
The field of emergent language represents a novel area of research within the domain of artificial intelligence, particularly within the context of multi-agent reinforcement learning. Although the concept of studying language emergence is not new, early approaches were primarily concerned with explaining human language formation, with little consideration given to its potential utility for artificial agents. In contrast, studies based on reinforcement learning aim to develop communicative capabilities in agents that are comparable to or even superior to human language. Thus, they extend beyond the learned statistical representations that are common in natural language processing research. This gives rise to a number of fundamental questions, from the prerequisites for language emergence to the criteria for measuring its success. This paper addresses these questions by providing a comprehensive review of 181 scientific publications on emergent language in artificial intelligence. Its objective is to serve as a reference for researchers interested in or proficient in the field. Consequently, the main contributions are the definition and overview of the prevailing terminology, the analysis of existing evaluation methods and metrics, and the description of the identified research gaps.
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