Sequential Neural Posterior and Likelihood Approximation

12 Feb 2021 Samuel Wiqvist Jes Frellsen Umberto Picchini

We introduce the sequential neural posterior and likelihood approximation (SNPLA) algorithm. SNPLA is a normalizing flows-based algorithm for inference in implicit models... (read more)

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