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Robust and integrative Bayesian neural networks for likelihood-free parameter inference

Authors :
Wrede, Fredrik
Eriksson, Robin
Jiang, Richard
Petzold, Linda
Engblom, Stefan
Hellander, Andreas
Singh, Prashant
Publication Year :
2021

Abstract

State-of-the-art neural network-based methods for learning summary statistics have delivered promising results for simulation-based likelihood-free parameter inference. Existing approaches require density estimation as a post-processing step building upon deterministic neural networks, and do not take network prediction uncertainty into account. This work proposes a robust integrated approach that learns summary statistics using Bayesian neural networks, and directly estimates the posterior density using categorical distributions. An adaptive sampling scheme selects simulation locations to efficiently and iteratively refine the predictive posterior of the network conditioned on observations. This allows for more efficient and robust convergence on comparatively large prior spaces. We demonstrate our approach on benchmark examples and compare against related methods.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2102.06521
Document Type :
Working Paper