Sequential Neural Methods for Likelihood-free Inference
Machine Learning
2018-11-22 v1 Machine Learning
Abstract
Likelihood-free inference refers to inference when a likelihood function cannot be explicitly evaluated, which is often the case for models based on simulators. Most of the literature is based on sample-based `Approximate Bayesian Computation' methods, but recent work suggests that approaches based on deep neural conditional density estimators can obtain state-of-the-art results with fewer simulations. The neural approaches vary in how they choose which simulations to run and what they learn: an approximate posterior or a surrogate likelihood. This work provides some direct controlled comparisons between these choices.
Cite
@article{arxiv.1811.08723,
title = {Sequential Neural Methods for Likelihood-free Inference},
author = {Conor Durkan and George Papamakarios and Iain Murray},
journal= {arXiv preprint arXiv:1811.08723},
year = {2018}
}