Feb. 2, 2024, 3:41 p.m. | Luyang Lin Lingzhi Wang Xiaoyan Zhao Jing Li Kam-Fai Wong

cs.CL updates on arXiv.org arxiv.org

This study focuses on media bias detection, crucial in today's era of influential social media platforms shaping individual attitudes and opinions. In contrast to prior work that primarily relies on training specific models tailored to particular datasets, resulting in limited adaptability and subpar performance on out-of-domain data, we introduce a general bias detection framework, IndiVec, built upon large language models. IndiVec begins by constructing a fine-grained media bias database, leveraging the robust instruction-following capabilities of large language models and vector …

adaptability bias contrast cs.cl datasets detection exploration fine-grained language language models large language large language models media opinions performance platforms prior social social media social media platforms study training work

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