法律硕士的社会情感与生俱来吗?关于提取跨人口情感的实证研究

Kunitomo Tanaka, Ryohei Sasano, Koichi Takeda
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摘要

大语言模型(LLMs)应该是通过从大量文本中训练模型来获取人类无意识的知识和情感,如社会常识和偏见。然而,目前还不清楚各种大型语言模型能在多大程度上捕捉到特定社会群体的情感。在本研究中,我们将重点放在以国籍、宗教和种族/民族定义的社会群体上,并验证在多大程度上可以从 LLMs 中捕捉和提取社会群体之间的情感。具体来说,我们将有关一个群体对另一个群体的情感的问题输入 LLM,对回答进行情感分析,并将结果与社会调查进行比较。使用五个具有代表性的 LLM 进行验证的结果显示,数据点数量相对较多的民族和宗教的相关性较高,P 值相对较小。这一结果表明,包括群体间情绪在内的 LLM 反应与实际社会调查结果非常吻合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Are Social Sentiments Inherent in LLMs? An Empirical Study on Extraction of Inter-demographic Sentiments
Large language models (LLMs) are supposed to acquire unconscious human knowledge and feelings, such as social common sense and biases, by training models from large amounts of text. However, it is not clear how much the sentiments of specific social groups can be captured in various LLMs. In this study, we focus on social groups defined in terms of nationality, religion, and race/ethnicity, and validate the extent to which sentiments between social groups can be captured in and extracted from LLMs. Specifically, we input questions regarding sentiments from one group to another into LLMs, apply sentiment analysis to the responses, and compare the results with social surveys. The validation results using five representative LLMs showed higher correlations with relatively small p-values for nationalities and religions, whose number of data points were relatively large. This result indicates that the LLM responses including the inter-group sentiments align well with actual social survey results.
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