Feb. 2, 2024, 3:46 p.m. | Ondrej Bohdal Da Li Shell Xu Hu Timothy Hospedales

cs.LG updates on arXiv.org arxiv.org

We study a new highly-practical problem setting that enables resource-constrained edge devices to adapt a pre-trained model to their local data distributions. Recognizing that device's data are likely to come from multiple latent domains that include a mixture of unlabelled domain-relevant and domain-irrelevant examples, we focus on the comparatively under-studied problem of latent domain adaptation. Considering limitations of edge devices, we aim to only use a pre-trained model and adapt it in a feed-forward way, without using back-propagation and without …

adapt cs.lg data devices domain domain adaptation domains edge edge devices examples focus multiple practical stat.ml study

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