AGMs use a lightweight learned potential V_phi with stop-gradient to selectively weight informative bridge samples in generative model training, yielding better fidelity and coverage.
Kingma, Abhishek Kumar, Stefano Ermon, and Ben Poole
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Action-Inspired Generative Models
AGMs use a lightweight learned potential V_phi with stop-gradient to selectively weight informative bridge samples in generative model training, yielding better fidelity and coverage.
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