Probabilistic Geometric Alignment via Bayesian Latent Transport for Domain-Adaptive Foundation Models

arXiv cs.LG / 2026/3/26

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要点

  • 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.

Abstract

Adapting large-scale foundation models to new domains with limited supervision remains a fundamental challenge due to latent distribution mismatch, unstable optimization dynamics, and miscalibrated uncertainty propagation. This paper introduces an uncertainty-aware probabilistic latent transport framework that formulates domain adaptation as a stochastic geometric alignment problem in representation space. A Bayesian transport operator is proposed to redistribute latent probability mass along Wasserstein-type geodesic trajectories, while a PAC-Bayesian regularization mechanism constrains posterior model complexity to mitigate catastrophic overfitting. The proposed formulation yields theoretical guarantees on convergence stability, loss landscape smoothness, and sample efficiency under distributional shift. Empirical analyses demonstrate substantial reduction in latent manifold discrepancy, accelerated transport energy decay, and improved covariance calibration compared with deterministic fine-tuning and adversarial domain adaptation baselines. Furthermore, bounded posterior uncertainty evolution indicates enhanced probabilistic reliability during cross-domain transfer. By establishing a principled connection between stochastic optimal transport geometry and statistical generalization theory, the proposed framework provides new insights into robust adaptation of modern foundation architectures operating in heterogeneous environments. These findings suggest that uncertainty-aware probabilistic alignment constitutes a promising paradigm for reliable transfer learning in next-generation deep representation systems.