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Main Authors: Dong, Wenchao, Zhunis, Assem, Chin, Hyojin, Han, Jiyoung, Cha, Meeyoung
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2402.10436
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author Dong, Wenchao
Zhunis, Assem
Chin, Hyojin
Han, Jiyoung
Cha, Meeyoung
author_facet Dong, Wenchao
Zhunis, Assem
Chin, Hyojin
Han, Jiyoung
Cha, Meeyoung
contents We explored cultural biases-individualism vs. collectivism-in ChatGPT across three Western languages (i.e., English, German, and French) and three Eastern languages (i.e., Chinese, Japanese, and Korean). When ChatGPT adopted an individualistic persona in Western languages, its collectivism scores (i.e., out-group values) exhibited a more negative trend, surpassing their positive orientation towards individualism (i.e., in-group values). Conversely, when a collectivistic persona was assigned to ChatGPT in Eastern languages, a similar pattern emerged with more negative responses toward individualism (i.e., out-group values) as compared to collectivism (i.e., in-group values). The results indicate that when imbued with a particular social identity, ChatGPT discerns in-group and out-group, embracing in-group values while eschewing out-group values. Notably, the negativity towards the out-group, from which prejudices and discrimination arise, exceeded the positivity towards the in-group. The experiment was replicated in the political domain, and the results remained consistent. Furthermore, this replication unveiled an intrinsic Democratic bias in Large Language Models (LLMs), aligning with earlier findings and providing integral insights into mitigating such bias through prompt engineering. Extensive robustness checks were performed using varying hyperparameter and persona setup methods, with or without social identity labels, across other popular language models.
format Preprint
id arxiv_https___arxiv_org_abs_2402_10436
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle I Am Not Them: Fluid Identities and Persistent Out-group Bias in Large Language Models
Dong, Wenchao
Zhunis, Assem
Chin, Hyojin
Han, Jiyoung
Cha, Meeyoung
Computation and Language
We explored cultural biases-individualism vs. collectivism-in ChatGPT across three Western languages (i.e., English, German, and French) and three Eastern languages (i.e., Chinese, Japanese, and Korean). When ChatGPT adopted an individualistic persona in Western languages, its collectivism scores (i.e., out-group values) exhibited a more negative trend, surpassing their positive orientation towards individualism (i.e., in-group values). Conversely, when a collectivistic persona was assigned to ChatGPT in Eastern languages, a similar pattern emerged with more negative responses toward individualism (i.e., out-group values) as compared to collectivism (i.e., in-group values). The results indicate that when imbued with a particular social identity, ChatGPT discerns in-group and out-group, embracing in-group values while eschewing out-group values. Notably, the negativity towards the out-group, from which prejudices and discrimination arise, exceeded the positivity towards the in-group. The experiment was replicated in the political domain, and the results remained consistent. Furthermore, this replication unveiled an intrinsic Democratic bias in Large Language Models (LLMs), aligning with earlier findings and providing integral insights into mitigating such bias through prompt engineering. Extensive robustness checks were performed using varying hyperparameter and persona setup methods, with or without social identity labels, across other popular language models.
title I Am Not Them: Fluid Identities and Persistent Out-group Bias in Large Language Models
topic Computation and Language
url https://arxiv.org/abs/2402.10436