communitym:从语言模型探究党派世界观

Hang Jiang, Doug Beeferman, Brandon Roy, Dwaipayan Roy
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引用次数: 10

摘要

随着美国政治态度在意识形态上的分歧,政治言论在语言上也出现了分歧。美国政党之间相互理解的侵蚀加速了两党之间日益扩大的两极分化。我们的目标是通过使用社区语言模型CommunityLM来探索对相同调查问题的社区特定反应的框架,使这些社区更容易相互理解。在我们的框架中,我们为Twitter上的每个社区确定忠诚的党派成员,并对他们撰写的推文进行微调。然后,我们使用对相应LMs的基于提示的探索来评估这两个群体的世界观,并使用提示来引出对美国国家选举研究(ANES) 2020探索性测试调查中调查的公众人物和群体的意见。我们将LMs生成的响应与ANES调查结果进行了比较,发现其一致性大大超过了几种基线方法。我们的工作旨在表明,我们可以使用社区lm来查询任何一群人的世界观,只要有足够大的社交媒体讨论或媒体饮食样本。
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CommunityLM: Probing Partisan Worldviews from Language Models
As political attitudes have diverged ideologically in the United States, political speech has diverged lingusitically. The ever-widening polarization between the US political parties is accelerated by an erosion of mutual understanding between them. We aim to make these communities more comprehensible to each other with a framework that probes community-specific responses to the same survey questions using community language models CommunityLM. In our framework we identify committed partisan members for each community on Twitter and fine-tune LMs on the tweets authored by them. We then assess the worldviews of the two groups using prompt-based probing of their corresponding LMs, with prompts that elicit opinions about public figures and groups surveyed by the American National Election Studies (ANES) 2020 Exploratory Testing Survey. We compare the responses generated by the LMs to the ANES survey results, and find a level of alignment that greatly exceeds several baseline methods. Our work aims to show that we can use community LMs to query the worldview of any group of people given a sufficiently large sample of their social media discussions or media diet.
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