Aug. 18, 2023, 5:08 a.m. | Synced

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In a new paper Bayesian Flow Networks, the NNAISENSE research team presents Bayesian Flow Networks (BFNs), a novel family of generative model manipulates parameters of the data distribution rather than operating on noisy data, which provides an effective solution to deal with discrete data.


The post Alex Graves’s Team Latest Work, Bayesian Flow Networks Address Discrete Data Generation Issues first appeared on Synced.

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