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arxiv: 2603.09453 · v3 · pith:SBX7HONAnew · submitted 2026-03-10 · 💻 cs.LG · cs.AI· stat.ML

Variational Routing: A Scalable Bayesian Framework for Calibrated Mixture-of-Experts Transformers

classification 💻 cs.LG cs.AIstat.ML
keywords routingvmoerbayesianfoundationinferencemodelsuncertaintymixture-of-experts
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Foundation models are increasingly being deployed in contexts where understanding the uncertainty of their outputs is critical to ensuring responsible deployment. While Bayesian methods offer a principled approach to uncertainty quantification, their computational overhead renders their use impractical for training or inference at foundation model scale. State-of-the-art models achieve parameter counts in the trillions through carefully engineered sparsity including Mixture-of-Experts (MoE) layers. In this work, we demonstrate calibrated uncertainty at scale by introducing Variational Mixture-of-Experts Routing (VMoER), a structured Bayesian approach for modelling uncertainty in MoE layers. VMoER confines Bayesian inference to the expert-selection stage which is typically done by a deterministic routing network. We instantiate VMoER using two inference strategies: amortised variational inference over routing logits and inferring a temperature parameter for stochastic expert selection. Across fine-tuning tested foundation models, VMoER improves routing stability under noise by 38\%, reduces calibration error by 94\%, and increases out-of-distribution AUROC by 12\%, while incurring less than 1\% additional FLOPs. These results suggest VMoER offers a scalable path toward robust and uncertainty-aware foundation models.

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  1. Affinity Is Not Enough: Recovering the Free Energy Principle in Mixture-of-Experts

    cs.LG 2026-05 conditional novelty 7.0

    Adding temporal memory via LIF, precision-weighted gating, and anticipatory prediction to MoE routers recovers effective expert selection at distribution transitions, with ablation confirming a super-additive beta-ant...