eusipco2022-hybridinferenceinvertibleneuralnetworks

https://github.com/biaslab/eusipco2022-hybridinferenceinvertibleneuralnetworks

Science Score: 44.0%

This score indicates how likely this project is to be science-related based on various indicators:

  • CITATION.cff file
    Found CITATION.cff file
  • codemeta.json file
    Found codemeta.json file
  • .zenodo.json file
    Found .zenodo.json file
  • DOI references
  • Academic publication links
  • Committers with academic emails
  • Institutional organization owner
  • JOSS paper metadata
  • Scientific vocabulary similarity
    Low similarity (4.0%) to scientific vocabulary
Last synced: 6 months ago · JSON representation ·

Repository

Basic Info
  • Host: GitHub
  • Owner: biaslab
  • Language: Jupyter Notebook
  • Default Branch: master
  • Size: 483 KB
Statistics
  • Stars: 0
  • Watchers: 3
  • Forks: 1
  • Open Issues: 0
  • Releases: 0
Created over 4 years ago · Last pushed over 3 years ago
Metadata Files
Readme Citation

README.md

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.

Owner

  • Name: BIASlab
  • Login: biaslab
  • Kind: organization
  • Email: info@biaslab.org
  • Location: Eindhoven, the Netherlands

Bayesian Intelligent Autonomous Systems lab

Citation (Citation.cff)

cff-version: 1.2.0
message: "Please cite this research as below."
authors:
- family-names: "van Erp"
  given-names: "Bart"
  orcid: "https://orcid.org/0000-0002-5619-7071"
- family-names: "de Vries"
  given-names: "Bert"
title: "Hybrid Inference with Invertible Neural Networks in Factor Graphs"
version: 1.0.0
date-released: 2022-08
url: "https://github.com/biaslab/EUSIPCO2022-HybridInferenceInvertibleNeuralNetworks"
preferred-citation:
  type: conference-paper
  authors:
  - family-names: "van Erp"
    given-names: "Bart"
    orcid: "https://orcid.org/0000-0002-5619-7071"
  - family-names: "de Vries"
    given-names: "Bert"
  title: "Hybrid Inference with Invertible Neural Networks in Factor Graphs"
  year: 2022
  month: 08
  conference:
    - name: 2022 30th European Signal Processing Conference (EUSIPCO)
  start: 1397
  end: 1401

GitHub Events

Total
Last Year

Committers

Last synced: 7 months ago

All Time
  • Total Commits: 12
  • Total Committers: 1
  • Avg Commits per committer: 12.0
  • Development Distribution Score (DDS): 0.0
Past Year
  • Commits: 0
  • Committers: 0
  • Avg Commits per committer: 0.0
  • Development Distribution Score (DDS): 0.0
Top Committers
Name Email Commits
Bart van Erp 4****p 12

Issues and Pull Requests

Last synced: 7 months ago

All Time
  • Total issues: 0
  • Total pull requests: 0
  • Average time to close issues: N/A
  • Average time to close pull requests: N/A
  • Total issue authors: 0
  • Total pull request authors: 0
  • Average comments per issue: 0
  • Average comments per pull request: 0
  • Merged pull requests: 0
  • Bot issues: 0
  • Bot pull requests: 0
Past Year
  • Issues: 0
  • Pull requests: 0
  • Average time to close issues: N/A
  • Average time to close pull requests: N/A
  • Issue authors: 0
  • Pull request authors: 0
  • Average comments per issue: 0
  • Average comments per pull request: 0
  • Merged pull requests: 0
  • Bot issues: 0
  • Bot pull requests: 0
Top Authors
Issue Authors
Pull Request Authors
Top Labels
Issue Labels
Pull Request Labels