3 research outputs found
Contrastive Domain Generalization via Logit Attribution Matching
Domain Generalization (DG) is an important open problem in machine learning.
Deep models are susceptible to domain shifts of even minute degrees, which
severely compromises their reliability in real applications. To alleviate the
issue, most existing methods enforce various invariant constraints across
multiple training domains. However,such an approach provides little performance
guarantee for novel test domains in general. In this paper, we investigate a
different approach named Contrastive Domain Generalization (CDG), which
exploits semantic invariance exhibited by strongly contrastive data pairs in
lieu of multiple domains. We present a causal DG theory that shows the
potential capability of CDG; together with a regularization technique, Logit
Attribution Matching (LAM), for realizing CDG. We empirically show that LAM
outperforms state-of-the-art DG methods with only a small portion of paired
data and that LAM helps models better focus on semantic features which are
crucial to DG.Comment: 21 pages, 10 figure