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Domain Generalization under Conditional and Label Shifts via Variational Bayesian Inference
- Publication Year :
- 2021
-
Abstract
- In this work, we propose a domain generalization (DG) approach to learn on several labeled source domains and transfer knowledge to a target domain that is inaccessible in training. Considering the inherent conditional and label shifts, we would expect the alignment of $p(x|y)$ and $p(y)$. However, the widely used domain invariant feature learning (IFL) methods relies on aligning the marginal concept shift w.r.t. $p(x)$, which rests on an unrealistic assumption that $p(y)$ is invariant across domains. We thereby propose a novel variational Bayesian inference framework to enforce the conditional distribution alignment w.r.t. $p(x|y)$ via the prior distribution matching in a latent space, which also takes the marginal label shift w.r.t. $p(y)$ into consideration with the posterior alignment. Extensive experiments on various benchmarks demonstrate that our framework is robust to the label shift and the cross-domain accuracy is significantly improved, thereby achieving superior performance over the conventional IFL counterparts.<br />Comment: 30th International Joint Conference on Artificial Intelligence (IJCAI) 2021
Details
- Database :
- arXiv
- Publication Type :
- Report
- Accession number :
- edsarx.2107.10931
- Document Type :
- Working Paper