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Main Authors: Radev, Stefan T., Mertens, Ulf K., Voss, Andreas, Ardizzone, Lynton, Köthe, Ullrich
Format: Preprint
Published: 2020
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Online Access:https://arxiv.org/abs/2003.06281
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author Radev, Stefan T.
Mertens, Ulf K.
Voss, Andreas
Ardizzone, Lynton
Köthe, Ullrich
author_facet Radev, Stefan T.
Mertens, Ulf K.
Voss, Andreas
Ardizzone, Lynton
Köthe, Ullrich
contents Estimating the parameters of mathematical models is a common problem in almost all branches of science. However, this problem can prove notably difficult when processes and model descriptions become increasingly complex and an explicit likelihood function is not available. With this work, we propose a novel method for globally amortized Bayesian inference based on invertible neural networks which we call BayesFlow. The method uses simulation to learn a global estimator for the probabilistic mapping from observed data to underlying model parameters. A neural network pre-trained in this way can then, without additional training or optimization, infer full posteriors on arbitrary many real datasets involving the same model family. In addition, our method incorporates a summary network trained to embed the observed data into maximally informative summary statistics. Learning summary statistics from data makes the method applicable to modeling scenarios where standard inference techniques with hand-crafted summary statistics fail. We demonstrate the utility of BayesFlow on challenging intractable models from population dynamics, epidemiology, cognitive science and ecology. We argue that BayesFlow provides a general framework for building amortized Bayesian parameter estimation machines for any forward model from which data can be simulated.
format Preprint
id arxiv_https___arxiv_org_abs_2003_06281
institution arXiv
publishDate 2020
record_format arxiv
spellingShingle BayesFlow: Learning complex stochastic models with invertible neural networks
Radev, Stefan T.
Mertens, Ulf K.
Voss, Andreas
Ardizzone, Lynton
Köthe, Ullrich
Machine Learning
Estimating the parameters of mathematical models is a common problem in almost all branches of science. However, this problem can prove notably difficult when processes and model descriptions become increasingly complex and an explicit likelihood function is not available. With this work, we propose a novel method for globally amortized Bayesian inference based on invertible neural networks which we call BayesFlow. The method uses simulation to learn a global estimator for the probabilistic mapping from observed data to underlying model parameters. A neural network pre-trained in this way can then, without additional training or optimization, infer full posteriors on arbitrary many real datasets involving the same model family. In addition, our method incorporates a summary network trained to embed the observed data into maximally informative summary statistics. Learning summary statistics from data makes the method applicable to modeling scenarios where standard inference techniques with hand-crafted summary statistics fail. We demonstrate the utility of BayesFlow on challenging intractable models from population dynamics, epidemiology, cognitive science and ecology. We argue that BayesFlow provides a general framework for building amortized Bayesian parameter estimation machines for any forward model from which data can be simulated.
title BayesFlow: Learning complex stochastic models with invertible neural networks
topic Machine Learning
url https://arxiv.org/abs/2003.06281