arXiv Analytics

Sign in

arXiv:1907.12299 [cs.LG]AbstractReferencesReviewsResources

Hidden Covariate Shift: A Minimal Assumption For Domain Adaptation

Victor Bouvier, Philippe Very, Céline Hudelot, Clément Chastagnol

Published 2019-07-29Version 1

Unsupervised Domain Adaptation aims to learn a model on a source domain with labeled data in order to perform well on unlabeled data of a target domain. Current approaches focus on learning \textit{Domain Invariant Representations}. It relies on the assumption that such representations are well-suited for learning the supervised task in the target domain. We rather believe that a better and minimal assumption for performing Domain Adaptation is the \textit{Hidden Covariate Shift} hypothesis. Such approach consists in learning a representation of the data such that the label distribution conditioned on this representation is domain invariant. From the Hidden Covariate Shift assumption, we derive an optimization procedure which learns to match an estimated joint distribution on the target domain and a re-weighted joint distribution on the source domain. The re-weighting is done in the representation space and is learned during the optimization procedure. We show on synthetic data and real world data that our approach deals with both \textit{Target Shift} and \textit{Concept Drift}. We report state-of-the-art performances on Amazon Reviews dataset \cite{blitzer2007biographies} demonstrating the viability of this approach.

Related articles: Most relevant | Search more
arXiv:2006.03689 [cs.LG] (Published 2020-06-05)
Anomaly Detection with Domain Adaptation
arXiv:2302.03133 [cs.LG] (Published 2023-02-06)
Domain Adaptation for Time Series Under Feature and Label Shifts
arXiv:2204.09244 [cs.LG] (Published 2022-04-20)
DAME: Domain Adaptation for Matching Entities