Graph Neural Networks with distributed ARMA filters

01/05/2019
by   Filippo Maria Bianchi, et al.
0

Recent graph neural networks implement convolutional layers based on polynomial filters operating in the spectral domain. In this paper, we propose a novel graph convolutional layer based on auto-regressive moving average (ARMA) filters that, compared to the polynomial ones, provides a more flexible response thanks to a rich transfer function that accounts for the concept of state. We implement the ARMA filter with a recursive and distributed formulation, obtaining a convolutional layer that is efficient to train, it is localized in the node space and can be applied to graphs with different topologies. In order to learn more abstract and compressed representations in deeper layers of the network, we alternate pooling operations based on node decimation with convolutions on coarsened versions of the original graph. We consider three major graph inference problems: semi-supervised node classification, graph classification, and graph signal classification. Results show that the proposed network with ARMA filters outperform those based on polynomial filters and defines the new state-of-the-art in several tasks.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/05/2019

Graph Neural Networks with convolutional ARMA filters

Recent graph neural networks implement convolutional layers based on pol...
research
06/08/2017

Learning Local Receptive Fields and their Weight Sharing Scheme on Graphs

We propose a simple and generic layer formulation that extends the prope...
research
04/28/2021

Reconstructing nodal pressures in water distribution systems with graph neural networks

Knowing the pressure at all times in each node of a water distribution s...
research
10/24/2019

DFNets: Spectral CNNs for Graphs with Feedback-Looped Filters

We propose a novel spectral convolutional neural network (CNN) model on ...
research
10/17/2022

Anisotropic Multi-Scale Graph Convolutional Network for Dense Shape Correspondence

This paper studies 3D dense shape correspondence, a key shape analysis a...
research
02/18/2023

Heterogeneous Graph Convolutional Neural Network via Hodge-Laplacian for Brain Functional Data

This study proposes a novel heterogeneous graph convolutional neural net...
research
03/14/2023

Graph Neural Network Surrogates of Fair Graph Filtering

Graph filters that transform prior node values to posterior scores via e...

Please sign up or login with your details

Forgot password? Click here to reset