Feb. 6, 2024, 5:45 a.m. | Ziqiao Wang Yongyi Mao

cs.LG updates on arXiv.org arxiv.org

Unsupervised domain adaptation (UDA) plays a crucial role in addressing distribution shifts in machine learning. In this work, we improve the theoretical foundations of UDA proposed by Acuna et al. (2021) by refining their f-divergence-based discrepancy and additionally introducing a new measure, f-domain discrepancy (f-DD). By removing the absolute value function and incorporating a scaling parameter, f-DD yields novel target error and sample complexity bounds, allowing us to recover previous KL-based results and bridging the gap between algorithms and theory …

cs.lg distribution divergence domain domain adaptation framework function machine machine learning role stat.ml unsupervised value work

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