解决意见偏见的原型代理,以促进网络讨论中冲突的消除

Hikaru Ishizuka, Shun Shiramatsu, Keiko Ono
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引用次数: 0

摘要

术语“扬弃”(或“否定”)指的是对两个对立的论点得出一致的答案,而不否认其中任何一个的过程。在这项研究中,我们进行了一个讨论实验,我们量化了扬弃的程度,并分析了结果,以确定有助于在讨论中停止冲突意见的因素。我们的研究结果显示,作为个人观点证据的网址数量与共识提案的扬弃程度之间存在微弱的正相关关系。然而,在实际的讨论和辩论中,有时每个人都提出同样的论点,很少或没有反对意见,从而导致偏见的观点。为了解决这个问题,我们开发了一种消除意见偏见的方法,其中一个代理发布信息,加强讨论中少数人的意见。实验结果表明,GPT-3自然语言处理模型可以用于信息提供的相关信息汇总和意见偏差的解决。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prototyping Agents for Resolving Opinion Biases Toward Facilitating Sublation of Conflict in Web-based Discussions
The term “sublation” (or “aufheben”) refers to the process of arriving at an agreed upon answer to two opposing arguments without denying either of them. In this study, we conducted a discussion experiment in which we quantified the degree of sublation and analyzed the results to determine the factors that contribute to the cessation of conflicting opinions in discussions. Our findings revealed a weak positive correlation between the number of URLs posted as evidence for one's opinion and the degree of sublation of the consensus proposal. In actual discussions and debates, however, there are times when everyone makes the same argument, with little or no opposing views, resulting in biased opinions. To address this problem, we developed a method to eliminate bias in opinions, in which an agent posts information that reinforces the opinion of a minority in a discussion. The experimental results demonstrate that GPT-3, a natural language processing model, can be applied to summarization of relevant information for information provision and the resolution of opinion bias.
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