2019
DOI: 10.48550/arxiv.1903.00863
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Bayesian Learning of Conditional Kernel Mean Embeddings for Automatic Likelihood-Free Inference

Abstract: In likelihood-free settings where likelihood evaluations are intractable, approximate Bayesian computation (ABC) addresses the formidable inference task to discover plausible parameters of simulation programs that explain the observations. However, they demand large quantities of simulation calls. Critically, hyperparameters that determine measures of simulation discrepancy crucially balance inference accuracy and sample efficiency, yet are difficult to tune. In this paper, we present kernel embedding likeliho… Show more

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