Skip to content

biaslab/EUSIPCO2022-HybridInferenceInvertibleNeuralNetworks

Repository files navigation

Hybrid Inference with Invertible Neural Networks in Factor Graphs

By Bart van Erp and Bert de Vries

Accepted to the 2022 European Signal Processing Conference (EUSIPCO)


Abstract

This paper bridges the gap in the literature between neural networks and probabilistic graphical models. Invertible neural networks are incorporated in factor graphs and inference in this model is described by linearization of the network. Consequently, hybrid probabilistic inference in the model is realized through message passing with local constraints on the Bethe free energy. We provide the local Bethe free energy for the invertible neural network node, which allows for evaluation of the performance of the entire probabilistic model. Experimental results show effective hybrid inference in a neural network-based probabilistic model for a binary classification task, paving the way towards a novel class of machine learning models.


This repository contains all experiments of the paper.

About

No description, website, or topics provided.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published