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WIMLE: Uncertainty-Aware World Models with IMLE for Sample-Efficient Continuous Control

About

Model-based reinforcement learning promises strong sample efficiency but often underperforms in practice due to compounding model error, unimodal world models that average over multi-modal dynamics, and overconfident predictions that bias learning. We introduce WIMLE, a model-based method that extends Implicit Maximum Likelihood Estimation (IMLE) to the model-based RL framework to learn stochastic, multi-modal world models without iterative sampling and to estimate predictive uncertainty via ensembles and latent sampling. During training, WIMLE weights each synthetic transition by its predicted confidence, preserving useful model rollouts while attenuating bias from uncertain predictions and enabling stable learning. Across $40$ continuous-control tasks spanning DeepMind Control, MyoSuite, and HumanoidBench, WIMLE achieves superior sample efficiency and competitive or better asymptotic performance than strong model-free and model-based baselines. Notably, on the challenging Humanoid-run task, WIMLE improves sample efficiency by over $50$\% relative to the strongest competitor, and on HumanoidBench it solves $8$ of $14$ tasks (versus $4$ for BRO and $5$ for SimbaV2). These results highlight the value of IMLE-based multi-modality and uncertainty-aware weighting for stable model-based RL.

Mehran Aghabozorgi, Alireza Moazeni, Yanshu Zhang, Ke Li• 2026

Related benchmarks

TaskDatasetResultRank
LocomotionDog & Humanoid suite
IQM0.897
32
Humanoid Locomotion and ManipulationHumanoidBench
IQM0.898
28
Dexterous ManipulationMyoSuite
IQM0.98
28
Continuous ControlDeepMind Control (DMC) Suite (100k steps)
IQM0.332
8
Continuous ControlDeepMind Control (DMC) Suite 200k steps
IQM57.5
8
Continuous ControlDeepMind Control (DMC) Suite 500k steps
IQM81.2
8
Continuous ControlDeepMind Control (DMC) Suite (1M steps)
IQM87.1
8
Continuous ControlHumanoid Mujoco 300k steps (train)
Time (h)4.74
4
Continuous ControlHumanoid Mujoco 500k steps (train)
Time (h)7.91
4
Continuous ControlHumanoid Mujoco 1000k steps (train)
Training Time (h)15.81
4
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