CLAISDASJan 23, 2025

Musical ethnocentrism in Large Language Models

arXiv:2501.13720v219 citationsh-index: 2NLP4MUSA
Originality Synthesis-oriented
AI Analysis

This addresses geocultural biases in LLMs, which is an incremental step in bias detection research.

The paper analyzed musical biases in ChatGPT and Mixtral by prompting them to list top musical contributors and rate musical cultures, finding a strong preference for Western music cultures.

Large Language Models (LLMs) reflect the biases in their training data and, by extension, those of the people who created this training data. Detecting, analyzing, and mitigating such biases is becoming a focus of research. One type of bias that has been understudied so far are geocultural biases. Those can be caused by an imbalance in the representation of different geographic regions and cultures in the training data, but also by value judgments contained therein. In this paper, we make a first step towards analyzing musical biases in LLMs, particularly ChatGPT and Mixtral. We conduct two experiments. In the first, we prompt LLMs to provide lists of the "Top 100" musical contributors of various categories and analyze their countries of origin. In the second experiment, we ask the LLMs to numerically rate various aspects of the musical cultures of different countries. Our results indicate a strong preference of the LLMs for Western music cultures in both experiments.

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