Factor Graph Neural Network

06/03/2019
by   Zhen Zhang, et al.
0

Most of the successful deep neural network architectures are structured, often consisting of elements like convolutional neural networks and gated recurrent neural networks. Recently, graph neural networks have been successfully applied to graph structured data such as point cloud and molecular data. These networks often only consider pairwise dependencies, as they operate on a graph structure. We generalize the graph neural network into a factor graph neural network (FGNN) in order to capture higher order dependencies. We show that FGNN is able to represent Max-Product Belief Propagation, an approximate inference algorithm on probabilistic graphical models; hence it is able to do well when Max-Product does well. Promising results on both synthetic and real datasets demonstrate the effectiveness of the proposed model.

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
10/19/2020

Neuralizing Efficient Higher-order Belief Propagation

Graph neural network models have been extensively used to learn node rep...
research
01/18/2022

A Short Tutorial on The Weisfeiler-Lehman Test And Its Variants

Graph neural networks are designed to learn functions on graphs. Typical...
research
10/22/2019

ProDyn0: Inferring calponin homology domain stretching behavior using graph neural networks

Graph neural networks are a quickly emerging field for non-Euclidean dat...
research
02/11/2020

Differentiable Graph Module (DGM) Graph Convolutional Networks

Graph deep learning has recently emerged as a powerful ML concept allowi...
research
10/07/2020

Simplicial Neural Networks

We present simplicial neural networks (SNNs), a generalization of graph ...
research
10/09/2018

The Outer Product Structure of Neural Network Derivatives

In this paper, we show that feedforward and recurrent neural networks ex...

Please sign up or login with your details

Forgot password? Click here to reset