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Diffusion Model is an Effective Planner and Data Synthesizer for Multi-Task Reinforcement Learning

About

Diffusion models have demonstrated highly-expressive generative capabilities in vision and NLP. Recent studies in reinforcement learning (RL) have shown that diffusion models are also powerful in modeling complex policies or trajectories in offline datasets. However, these works have been limited to single-task settings where a generalist agent capable of addressing multi-task predicaments is absent. In this paper, we aim to investigate the effectiveness of a single diffusion model in modeling large-scale multi-task offline data, which can be challenging due to diverse and multimodal data distribution. Specifically, we propose Multi-Task Diffusion Model (\textsc{MTDiff}), a diffusion-based method that incorporates Transformer backbones and prompt learning for generative planning and data synthesis in multi-task offline settings. \textsc{MTDiff} leverages vast amounts of knowledge available in multi-task data and performs implicit knowledge sharing among tasks. For generative planning, we find \textsc{MTDiff} outperforms state-of-the-art algorithms across 50 tasks on Meta-World and 8 maps on Maze2D. For data synthesis, \textsc{MTDiff} generates high-quality data for testing tasks given a single demonstration as a prompt, which enhances the low-quality datasets for even unseen tasks.

Haoran He, Chenjia Bai, Kang Xu, Zhuoran Yang, Weinan Zhang, Dong Wang, Bin Zhao, Xuelong Li• 2023

Related benchmarks

TaskDatasetResultRank
Multi-task reinforcement learningMeta-World MT50 (MT50-rand) V2 (Near-optimal)
Avg Success Rate61.32
8
Multi-objective Reinforcement LearningMO-Gymnasium ResourceGathering
Sparsity642
8
Multi-objective Reinforcement LearningMO-Gymnasium FruitTree
Sparsity208
8
Multi-objective Reinforcement LearningMO-Gymnasium MountainCar
Sparsity62.1
8
Multi-objective Reinforcement LearningMO-Gymnasium Deep Sea Treasure
Sparsity13.4
8
Multi-objective Reinforcement LearningMO-Gymnasium FourRoom
Sparsity318
8
Multi-objective Reinforcement LearningMO-Gymnasium BreakableBottles
Sparsity32.9
8
Multi-objective Reinforcement LearningMO-Gymnasium MOLunarLander
Sparsity11.9
8
Multi-objective Reinforcement LearningMO-Gymnasium HopperEnv
Sparsity1.11
8
Multi-objective Reinforcement LearningMO-Gymnasium MOHalfcheetah
Sparsity9.21
8
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