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[2305.14456] Having Beer after Prayer? Measuring Cultural Bias in Large Language Models



Download a PDF of the paper titled Having Beer after Prayer? Measuring Cultural Bias in Large Language Models, by Tarek Naous and 3 other authors

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Abstract:As the reach of large language models (LMs) expands globally, their ability to cater to diverse cultural contexts becomes crucial. Despite advancements in multilingual capabilities, models are not designed with appropriate cultural nuances. In this paper, we show that multilingual and Arabic monolingual LMs exhibit bias towards entities associated with Western culture. We introduce CAMeL, a novel resource of 628 naturally-occurring prompts and 20,368 entities spanning eight types that contrast Arab and Western cultures. CAMeL provides a foundation for measuring cultural biases in LMs through both extrinsic and intrinsic evaluations. Using CAMeL, we examine the cross-cultural performance in Arabic of 12 different LMs on tasks such as story generation, NER, and sentiment analysis, where we find concerning cases of stereotyping and cultural unfairness. We further test their text-infilling performance, revealing the incapability of appropriate adaptation to Arab cultural contexts. Finally, we analyze 6 Arabic pre-training corpora and find that commonly used sources such as Wikipedia may not be best suited to build culturally aware LMs, if used as they are without adjustment. We will make CAMeL publicly available at: this https URL

Submission history

From: Tarek Naous [view email]
[v1]
Tue, 23 May 2023 18:27:51 UTC (9,028 KB)
[v2]
Thu, 16 Nov 2023 04:46:27 UTC (10,482 KB)
[v3]
Mon, 19 Feb 2024 23:10:40 UTC (12,347 KB)



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