Feb. 7, 2024, 5:43 a.m. | Antoine Collas R\'emi Flamary Alexandre Gramfort

cs.LG updates on arXiv.org arxiv.org

This paper introduces a novel domain adaptation technique for time series data, called Mixing model Stiefel Adaptation (MSA), specifically addressing the challenge of limited labeled signals in the target dataset. Leveraging a domain-dependent mixing model and the optimal transport domain adaptation assumption, we exploit abundant unlabeled data in the target domain to ensure effective prediction by establishing pairwise correspondence with equivalent signal variances between domains. Theoretical foundations are laid for identifying crucial Stiefel matrices, essential for recovering underlying signal variances …

alignment applications challenge covariance cs.lg data dataset domain domain adaptation eess.sp exploit meg novel paper series stat.ml through time series transport

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