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Research PaperResearchia:202602.12064[Robotics > Robotics]

Data-Efficient Hierarchical Goal-Conditioned Reinforcement Learning via Normalizing Flows

Shaswat Garg

Abstract

Hierarchical goal-conditioned reinforcement learning (H-GCRL) provides a powerful framework for tackling complex, long-horizon tasks by decomposing them into structured subgoals. However, its practical adoption is hindered by poor data efficiency and limited policy expressivity, especially in offline or data-scarce regimes. In this work, Normalizing flow-based hierarchical implicit Q-learning (NF-HIQL), a novel framework that replaces unimodal gaussian policies with expressive normalizing flow policies at both the high- and low-levels of the hierarchy is introduced. This design enables tractable log-likelihood computation, efficient sampling, and the ability to model rich multimodal behaviors. New theoretical guarantees are derived, including explicit KL-divergence bounds for Real-valued non-volume preserving (RealNVP) policies and PAC-style sample efficiency results, showing that NF-HIQL preserves stability while improving generalization. Empirically, NF-HIQL is evaluted across diverse long-horizon tasks in locomotion, ball-dribbling, and multi-step manipulation from OGBench. NF-HIQL consistently outperforms prior goal-conditioned and hierarchical baselines, demonstrating superior robustness under limited data and highlighting the potential of flow-based architectures for scalable, data-efficient hierarchical reinforcement learning.


Source: arXiv:2602.11142v1 - http://arxiv.org/abs/2602.11142v1 PDF: https://arxiv.org/pdf/2602.11142v1 Original Link: http://arxiv.org/abs/2602.11142v1

Submission:2/12/2026
Comments:0 comments
Subjects:Robotics; Robotics
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arXiv: This paper is hosted on arXiv, an open-access repository
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