Respecting Domain Relations: Hypothesis Invariance for Domain Generalization
October 15, 2020 ยท Declared Dead ยท ๐ International Conference on Pattern Recognition
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Authors
Ziqi Wang, Marco Loog, Jan van Gemert
arXiv ID
2010.07591
Category
cs.LG: Machine Learning
Cross-listed
cs.CV
Citations
56
Venue
International Conference on Pattern Recognition
Last Checked
2 months ago
Abstract
In domain generalization, multiple labeled non-independent and non-identically distributed source domains are available during training while neither the data nor the labels of target domains are. Currently, learning so-called domain invariant representations (DIRs) is the prevalent approach to domain generalization. In this work, we define DIRs employed by existing works in probabilistic terms and show that by learning DIRs, overly strict requirements are imposed concerning the invariance. Particularly, DIRs aim to perfectly align representations of different domains, i.e. their input distributions. This is, however, not necessary for good generalization to a target domain and may even dispose of valuable classification information. We propose to learn so-called hypothesis invariant representations (HIRs), which relax the invariance assumptions by merely aligning posteriors, instead of aligning representations. We report experimental results on public domain generalization datasets to show that learning HIRs is more effective than learning DIRs. In fact, our approach can even compete with approaches using prior knowledge about domains.
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