CommPOOL: An Interpretable Graph Pooling Framework for Hierarchical Graph Representation Learning

12/10/2020
by   Haoteng Tang, et al.
0

Recent years have witnessed the emergence and flourishing of hierarchical graph pooling neural networks (HGPNNs) which are effective graph representation learning approaches for graph level tasks such as graph classification. However, current HGPNNs do not take full advantage of the graph's intrinsic structures (e.g., community structure). Moreover, the pooling operations in existing HGPNNs are difficult to be interpreted. In this paper, we propose a new interpretable graph pooling framework - CommPOOL, that can capture and preserve the hierarchical community structure of graphs in the graph representation learning process. Specifically, the proposed community pooling mechanism in CommPOOL utilizes an unsupervised approach for capturing the inherent community structure of graphs in an interpretable manner. CommPOOL is a general and flexible framework for hierarchical graph representation learning that can further facilitate various graph-level tasks. Evaluations on five public benchmark datasets and one synthetic dataset demonstrate the superior performance of CommPOOL in graph representation learning for graph classification compared to the state-of-the-art baseline methods, and its effectiveness in capturing and preserving the community structure of graphs.

READ FULL TEXT
research
11/14/2019

Hierarchical Graph Pooling with Structure Learning

Graph Neural Networks (GNNs), which generalize deep neural networks to g...
research
04/15/2020

MxPool: Multiplex Pooling for Hierarchical Graph Representation Learning

How to utilize deep learning methods for graph classification tasks has ...
research
04/13/2021

Hierarchical Adaptive Pooling by Capturing High-order Dependency for Graph Representation Learning

Graph neural networks (GNN) have been proven to be mature enough for han...
research
08/06/2019

Sparse hierarchical representation learning on molecular graphs

Architectures for sparse hierarchical representation learning have recen...
research
08/18/2022

Robust Causal Graph Representation Learning against Confounding Effects

The prevailing graph neural network models have achieved significant pro...
research
06/27/2022

Iso-CapsNet: Isomorphic Capsule Network for Brain Graph Representation Learning

Brain graph representation learning serves as the fundamental technique ...
research
08/22/2023

Transformers for Capturing Multi-level Graph Structure using Hierarchical Distances

Graph transformers need strong inductive biases to derive meaningful att...

Please sign up or login with your details

Forgot password? Click here to reset