通过使用GPT-3生成查询词来推荐与基于web的讨论相关的信息的代理

Ryosuke Kinoshita, Shun Shiramatsu
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引用次数: 1

摘要

在因新冠肺炎疫情而成为主流的网络讨论中,参与者掌握的信息量和对讨论的理解程度各不相同。因此,一些与会者可能不能令人满意地发言,这可能会阻碍整个讨论的共识建立。因此,我们开发了一个代理,它可以自动推荐与讨论相关的信息,作为促进参与者发言的信息。代理首先从正在进行的Web讨论中获取必要的讨论数据。通过实时搜索确定要推荐的信息。使用预先训练的查询词生成模型生成搜索的查询词。在从搜索获得的信息中选择要推荐的信息时,使用一个根据讨论阶段对获取的信息进行分类的模型。在一个讨论实验中,agent介入了一个基于网络的讨论,结果表明agent的有效性,尽管还有一些需要改进的地方。但是,由于讨论实验的规模较小,未来还需要在大规模的讨论中对agent进行验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Agent for Recommending Information Relevant to Web-based Discussion by Generating Query Terms using GPT-3
In Web discussions, which have become mainstream with COVID-19, the amount of information possessed and the level of understanding of the discussion differ among participants. As a result, some participants may not be able to speak up satisfactorily, and this can hinder consensus building in the discussion as a whole. Therefore, we develop an agent that automatically recommends information related to the discussion as information that facilitates participants to speak up. The agent first obtains necessary discussion data from on-going Web discussions. The information to be recommended is determined by real-time search. Query words for the search are generated using a pre-trained query-term-generation model. When selecting information to recommend from the information obtained in the search, a model that classifies the acquired information according to the discussion phase is used. The results of a discussion experiment in which an agent intervened in a Web-based discussion showed many results indicating the effectiveness of the agent, although there are some points that need to be improved. However, since the scale of the discussion experiment was small, it will be necessary to validate the agent in large-scale discussions in the future.
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