Beyond Normalization: Rethinking the Partition Function as a Difficulty Scheduler for RLVR
Researchers propose PACED-RL, a novel post-training framework that reinterprets the partition function in GFlowNet-based LLM training as a difficulty scheduler rather than merely a normalizer. By leveraging per-prompt accuracy signals, the method improves sample efficiency and maintains generation diversity while outperforming existing reward-maximizing approaches.