Feb. 5, 2024, 3:42 p.m. | Yujie Lin Dong Li Chen Zhao Xintao Wu Qin Tian Minglai Shao

cs.LG updates on arXiv.org arxiv.org

Supervised fairness-aware machine learning under distribution shifts is an emerging field that addresses the challenge of maintaining equitable and unbiased predictions when faced with changes in data distributions from source to target domains. In real-world applications, machine learning models are often trained on a specific dataset but deployed in environments where the data distribution may shift over time due to various factors. This shift can lead to unfair predictions, disproportionately affecting certain groups characterized by sensitive attributes, such as race …

algorithmic fairness applications challenge cs.ai cs.cy cs.lg data dataset distribution domains environments fairness machine machine learning machine learning models predictions survey unbiased world

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