English

Automatic Posterior Transformation for Likelihood-Free Inference

Machine Learning 2019-05-21 v1 Machine Learning

Abstract

How can one perform Bayesian inference on stochastic simulators with intractable likelihoods? A recent approach is to learn the posterior from adaptively proposed simulations using neural network-based conditional density estimators. However, existing methods are limited to a narrow range of proposal distributions or require importance weighting that can limit performance in practice. Here we present automatic posterior transformation (APT), a new sequential neural posterior estimation method for simulation-based inference. APT can modify the posterior estimate using arbitrary, dynamically updated proposals, and is compatible with powerful flow-based density estimators. It is more flexible, scalable and efficient than previous simulation-based inference techniques. APT can operate directly on high-dimensional time series and image data, opening up new applications for likelihood-free inference.

Keywords

Cite

@article{arxiv.1905.07488,
  title  = {Automatic Posterior Transformation for Likelihood-Free Inference},
  author = {David S. Greenberg and Marcel Nonnenmacher and Jakob H. Macke},
  journal= {arXiv preprint arXiv:1905.07488},
  year   = {2019}
}
R2 v1 2026-06-23T09:11:18.554Z