Geo-Cultural Fairness and Dataset Provenance in Large Language Models

Geo-cultural biases in large language models across travel recommendations and story generation, revealing disparities in representation for poorer regions. The work also introduces STAMP, a dataset watermarking framework that enables creators to detect unauthorized use of proprietary data in language model training, promoting transparency, attribution, and responsible AI development. 

Faculty: Danish Purthi

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