没有理解的性能:ChatGPT 如何依靠人类修复对话故障

IF 2.1 2区 文学 Q2 COMMUNICATION
Ole Pütz, Elena Esposito
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引用次数: 0

摘要

基于 LLM 的聊天机器人能够生成与上下文相适应的信息文本,这表明它们也能够理解文本。相反,我们认为,将生成文本和理解文本这两种能力分开才是聊天机器人在与人类用户对话中表现出色的关键。这一论点要求我们转变视角,从关注机器智能转向关注交流能力。我们用会话分析中所谓的 "修复 "的实证例子来说明我们的论点,表明聊天机器人对问题的处理并不是基于对正在发生的事情的基本理解,而是基于它们对人类对话伙伴反馈的使用。最后,我们建议,聊天机器人与用户之间的互动策略不应以提高计算能力为目标,而应培养一种新的交流能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance without understanding: How ChatGPT relies on humans to repair conversational trouble
LLM-based chatbots’ ability to generate contextually appropriate and informative texts can be taken as an indication that they are also able to understand text. We argue instead that the separation of the two competences to generate and to understand text is the key to their performance in dialog with human users. This argument requires a shift in perspective from a concern with machine intelligence to a concern with communicative competence. We illustrate our argument with empirical examples of what conversation analysis calls ‘repair’, showing that the management of trouble by chatbots is not based on an underlying understanding of what is going on but rather on their use of the feedback by human conversational partners. In the conclusion we suggest that strategies for the interaction between chatbots and users should not aim to improve computational skills but to develop a new communicative competence.
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来源期刊
Discourse & Communication
Discourse & Communication COMMUNICATION-
CiteScore
3.30
自引率
5.30%
发文量
41
期刊介绍: Discourse & Communication is an international, peer-reviewed journal that publishes articles that pay specific attention to the qualitative, discourse analytical approach to issues in communication research. Besides the classical social scientific methods in communication research, such as content analysis and frame analysis, a more explicit study of the structures of discourse (text, talk, images or multimedia messages) allows unprecedented empirical insights into the many phenomena of communication. Since contemporary discourse study is not limited to the account of "texts" or "conversation" alone, but has extended its field to the study of the cognitive, interactional, social, cultural.
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