CVApr 20

Multi-Domain Learning with Global Expert Mapping

arXiv:2604.1884216.2h-index: 25
Predicted impact top 41% in CV · last 90 daysOriginality Incremental advance
AI Analysis

For multi-dataset learning, GEM resolves the conflict between load balancing and domain specialization in MoEs, improving performance on rare and out-of-distribution domains.

GEM replaces learned routing in Mixture-of-Experts with a global scheduler using linear programming and hierarchical rounding, achieving state-of-the-art on UODB benchmark with notable gains on underrepresented datasets and solving task interference in few-shot adaptation.

Human perception generalizes well across different domains, but most vision models struggle beyond their training data. This gap motivates multi-dataset learning, where a single model is trained on diverse datasets to improve robustness under domain shifts. However, unified training remains challenging due to inconsistencies in data distributions and label semantics. Mixture-of-Experts (MoE) models provide a scalable solution by routing inputs to specialized subnetworks (experts). Yet, existing MoEs often fail to specialize effectively, as their load-balancing mechanisms enforce uniform input distribution across experts. This fairness conflicts with domain-aware routing, causing experts to learn redundant representations, and reducing performance especially on rare or out-of-distribution domains. We propose GEM (Global Expert Mapping), a planner-compiler framework that replaces the learned router with a global scheduler. Our planner, based on linear programming relaxation, computes a fractional assignment of datasets to experts, while the compiler applies hierarchical rounding to convert this soft plan into a deterministic, capacity-aware mapping. Unlike prior MoEs, GEM avoids balancing loss, resolves the conflict between fairness and specialization, and produces interpretable routing. Experiments show that GEM-DINO achieves state-of-the-art performance on the UODB benchmark, with notable gains on underrepresented datasets and solves task interference in few-shot adaptation scenarios.

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