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Poster
in
Workshop: Structured Probabilistic Inference and Generative Modeling

QGFN: Controllable Greediness with Action Values

Elaine Lau · Stephen Lu · Ling Pan · Doina Precup · Emmanuel Bengio

Keywords: [ Generative Models ] [ molecule design ] [ Reinforcement Learning ] [ GFlowNets ]


Abstract: Generative Flow Networks (GFlowNets; GFNs) are a family of energy-based generative methods for combinatorial objects, capable of generating diverse and high-utility samples. However, consistently biasing GFNs towards producing high-utility samples is non-trivial. In this work, we leverage connections between GFNs and reinforcement learning (RL) and propose to combine the GFN policy with an action-value estimate, $Q$, to create greedier sampling policies which can be controlled by a mixing parameter. We show that several variants of the proposed method, QGFN, are able to improve on the number of high-reward samples generated in a variety of tasks without sacrificing diversity.

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