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Behavioral Mode Discovery for Fine-tuning Multimodal Generative Policies

About

We address the problem of fine-tuning pre-trained generative policies with reinforcement learning (RL) while preserving the multimodality of their action distributions. Existing methods for RL fine-tuning of generative policies (e.g., diffusion policies) improve task performance but often collapse diverse behaviors into a single reward-maximizing mode. To mitigate this issue, we propose an unsupervised mode discovery framework that uncovers latent behavioral modes within generative policies. The discovered modes enable the use of mutual information as an intrinsic reward, regularizing RL fine-tuning to enhance task success while maintaining behavioral diversity. Experiments on robotic manipulation tasks demonstrate that our method consistently outperforms conventional fine-tuning approaches, achieving higher success rates and preserving richer multimodal action distributions.

Alberta Longhini, David Emukpere, Jean-Michel Renders, Seungsu Kim• 2026

Related benchmarks

TaskDatasetResultRank
Robot ManipulationFranka-Kitchen--
15
LocomotionANYmal locomotion environment
Success Rate (SR)100
8
Multimodal Policy Fine-TuningGaussian-mixture environment (G1 landscape)
Success Rate (SR)100
7
Multimodal Policy Fine-TuningGaussian-mixture environment G2
SR100
7
Avoid2D Multimodal Environment
SR100
4
Lift2D Multimodal Environment
Success Rate (SR)99
4
Reach2D Multimodal Environment
Success Rate (SR)100
4
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