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Model-Based Diffusion Sampling for Predictive Control in Offline Decision Making

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arxiv 2512.08280 v3 pith:O5G5XF4U submitted 2025-12-09 cs.RO cs.AIcs.SYeess.SY

Model-Based Diffusion Sampling for Predictive Control in Offline Decision Making

classification cs.RO cs.AIcs.SYeess.SY
keywords diffusiondynamicsmodelplannertrajectoriescompositionalcontrolmpdiffuser
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Offline decision-making via diffusion models often produces trajectories that are misaligned with system dynamics, limiting their reliability for control. We propose Model Predictive Diffuser (MPDiffuser), a compositional diffusion framework that combines a diffusion planner with a dynamics diffusion model to generate task-aligned and dynamically plausible trajectories. MPDiffuser interleaves planner and dynamics updates during sampling, progressively correcting feasibility while preserving task intent. A lightweight ranking module then selects trajectories that best satisfy task objectives. The compositional design improves sample efficiency and adaptability by enabling the dynamics model to leverage diverse and previously unseen data independently of the planner. Empirically, we demonstrate consistent improvements over prior diffusion-based methods on unconstrained (D4RL) and constrained (DSRL) benchmarks, and validate practicality through deployment on a real quadrupedal robot.

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Cited by 1 Pith paper

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Expressivity and Statistical Trade-offs in Diffusion Policy Learning

    stat.ML 2026-07 accept novelty 7.0

    Drift Lipschitz budget K yields 1/K value approximation for diffusion policies, with matching lower bound, and finite-sample rates Õ(n^{-2/(m+6)}) (generic) or Õ(n^{-2/(m+4)}) (dissipative).