Bregman Centroid Guided Cross-Entropy Method
Bregman Centroid Guided Cross-Entropy Method
The Cross-Entropy Method (CEM) is a widely adopted trajectory optimizer in model-based reinforcement learning (MBRL), but its unimodal sampling strategy often leads to premature convergence in multimodal landscapes. In this work, we propose Bregman Centroid Guided CEM ($\mathcal{BC}$-EvoCEM), a lightweight enhancement to ensemble CEM that leverages $\textit{Bregman centroids}$ for principled information aggregation and diversity control. $\textbf{$\mathcal{BC}$-EvoCEM}$ computes a performance-weighted Bregman centroid across CEM workers and updates the least contributing ones by sampling within a trust region around the centroid. Leveraging the duality between Bregman divergences and exponential family distributions, we show that $\textbf{$\mathcal{BC}$-EvoCEM}$ integrates seamlessly into standard CEM pipelines with negligible overhead. Empirical results on synthetic benchmarks, a cluttered navigation task, and full MBRL pipelines demonstrate that $\textbf{$\mathcal{BC}$-EvoCEM}$ enhances both convergence and solution quality, providing a simple yet effective upgrade for CEM.
Yuliang Gu、Hongpeng Cao、Marco Caccamo、Naira Hovakimyan
计算技术、计算机技术
Yuliang Gu,Hongpeng Cao,Marco Caccamo,Naira Hovakimyan.Bregman Centroid Guided Cross-Entropy Method[EB/OL].(2025-06-02)[2025-06-21].https://arxiv.org/abs/2506.02205.点此复制
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