Probabilistic Geometric Alignment via Bayesian Latent Transport for Domain-Adaptive Foundation Models
arXiv cs.LG / 3/26/2026
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Key Points
- The paper addresses domain adaptation for foundation models under limited supervision by framing latent distribution mismatch as an uncertainty-aware stochastic geometric alignment problem in representation space.
- It proposes a Bayesian latent transport operator that moves latent probability mass along Wasserstein-type geodesic trajectories to improve alignment while accounting for uncertainty.
- A PAC-Bayesian regularization mechanism is introduced to control posterior complexity and reduce catastrophic overfitting risks during cross-domain transfer.
- The authors provide theoretical guarantees for convergence stability, loss-landscape smoothness, and improved sample efficiency under distribution shift, linking stochastic optimal transport geometry with generalization theory.
- Experiments show reductions in latent manifold discrepancy, faster transport energy decay, better covariance calibration, and bounded evolution of posterior uncertainty compared with deterministic fine-tuning and adversarial domain adaptation baselines.
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