WINFlowNets: Warm-up Integrated Networks Training of Generative Flow Networks for Robotics and Machine Fault Adaptation
arXiv cs.LG / 3/19/2026
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Key Points
- WINFlowNets is introduced as a co-training framework for flow and retrieval networks within continuous Generative Flow Networks (CFlowNets) to tackle sequential decision-making in robotics.
- It eliminates reliance on pre-training by adding a warm-up phase for the retrieval network and a shared training setup with a shared replay buffer to enable co-training of both the flow and retrieval networks.
- In simulated robotic tasks, WINFlowNets outperform CFlowNets and state-of-the-art RL methods in terms of average reward and training stability.
- The approach demonstrates strong adaptability in fault environments, enabling effective learning with limited sample data in dynamic robotic systems.




