Neuralizing Efficient Higher-order Belief Propagation

10/19/2020
by   Mohammed Haroon Dupty, et al.
0

Graph neural network models have been extensively used to learn node representations for graph structured data in an end-to-end setting. These models often rely on localized first order approximations of spectral graph convolutions and hence are unable to capture higher-order relational information between nodes. Probabilistic Graphical Models form another class of models that provide rich flexibility in incorporating such relational information but are limited by inefficient approximate inference algorithms at higher order. In this paper, we propose to combine these approaches to learn better node and graph representations. First, we derive an efficient approximate sum-product loopy belief propagation inference algorithm for higher-order PGMs. We then embed the message passing updates into a neural network to provide the inductive bias of the inference algorithm in end-to-end learning. This gives us a model that is flexible enough to accommodate domain knowledge while maintaining the computational advantage. We further propose methods for constructing higher-order factors that are conditioned on node and edge features and share parameters wherever necessary. Our experimental evaluation shows that our model indeed captures higher-order information, substantially outperforming state-of-the-art k-order graph neural networks in molecular datasets.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/02/2023

Factor Graph Neural Networks

In recent years, we have witnessed a surge of Graph Neural Networks (GNN...
research
12/10/2020

Factor Graph Molecule Network for Structure Elucidation

Designing a network to learn a molecule structure given its physical/che...
research
01/26/2023

Convolutional Learning on Simplicial Complexes

We propose a simplicial complex convolutional neural network (SCCNN) to ...
research
06/03/2019

Factor Graph Neural Network

Most of the successful deep neural network architectures are structured,...
research
10/18/2019

Spatially-Aware Graph Neural Networks for Relational Behavior Forecasting from Sensor Data

In this paper, we tackle the problem of relational behavior forecasting ...
research
09/02/2022

Higher-order Clustering and Pooling for Graph Neural Networks

Graph Neural Networks achieve state-of-the-art performance on a plethora...
research
12/10/2021

Neural Belief Propagation for Scene Graph Generation

Scene graph generation aims to interpret an input image by explicitly mo...

Please sign up or login with your details

Forgot password? Click here to reset