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Rethinking Multi-domain Generalization with A General Learning Objective

About

Multi-domain generalization (mDG) is universally aimed to minimize the discrepancy between training and testing distributions to enhance marginal-to-label distribution mapping. However, existing mDG literature lacks a general learning objective paradigm and often imposes constraints on static target marginal distributions. In this paper, we propose to leverage a $Y$-mapping to relax the constraint. We rethink the learning objective for mDG and design a new \textbf{general learning objective} to interpret and analyze most existing mDG wisdom. This general objective is bifurcated into two synergistic amis: learning domain-independent conditional features and maximizing a posterior. Explorations also extend to two effective regularization terms that incorporate prior information and suppress invalid causality, alleviating the issues that come with relaxed constraints. We theoretically contribute an upper bound for the domain alignment of domain-independent conditional features, disclosing that many previous mDG endeavors actually \textbf{optimize partially the objective} and thus lead to limited performance. As such, our study distills a general learning objective into four practical components, providing a general, robust, and flexible mechanism to handle complex domain shifts. Extensive empirical results indicate that the proposed objective with $Y$-mapping leads to substantially better mDG performance in various downstream tasks, including regression, segmentation, and classification.

Zhaorui Tan, Xi Yang, Kaizhu Huang• 2024

Related benchmarks

TaskDatasetResultRank
Semantic segmentationCityscapes (test)
mIoU35.02
1145
Monocular Depth EstimationNYU v2 (test)
Abs Rel11.33
257
Domain GeneralizationVLCS
Accuracy79.2
238
Domain GeneralizationPACS
Accuracy (Art)84.7
221
Domain GeneralizationOfficeHome
Accuracy70.7
182
Domain GeneralizationDomainBed
Average Accuracy78.2
127
Domain GeneralizationDomainNet
Accuracy44.6
113
Domain GeneralizationTerraIncognita
Accuracy51.1
81
Domain GeneralizationOffice-Home
Average Accuracy70.7
63
Semantic segmentationBDD100K (test)
mIoU38.62
58
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