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arxiv: 2407.03105 · v1 · pith:DY5VQPXW · submitted 2024-07-03 · cs.LG

On Generalization for Generative Flow Networks

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classification cs.LG
keywords generalizationfunctiongflownetsrewardsamplingcapacityconstructeddistribution
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Generative Flow Networks (GFlowNets) have emerged as an innovative learning paradigm designed to address the challenge of sampling from an unnormalized probability distribution, called the reward function. This framework learns a policy on a constructed graph, which enables sampling from an approximation of the target probability distribution through successive steps of sampling from the learned policy. To achieve this, GFlowNets can be trained with various objectives, each of which can lead to the model s ultimate goal. The aspirational strength of GFlowNets lies in their potential to discern intricate patterns within the reward function and their capacity to generalize effectively to novel, unseen parts of the reward function. This paper attempts to formalize generalization in the context of GFlowNets, to link generalization with stability, and also to design experiments that assess the capacity of these models to uncover unseen parts of the reward function. The experiments will focus on length generalization meaning generalization to states that can be constructed only by longer trajectories than those seen in training.

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Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Your GFlowNet Secretly Learns an Optimal Transport Plan

    cs.LG 2026-06 unverdicted novelty 7.0

    Minimum-flow GFlowNets on graphs encode optimal transport plans, with the learned policy recovering the optimal coupling between source and target distributions.