Will More Expressive Graph Neural Networks do Better on Generative Tasks?

08/23/2023
by   Xiandong Zou, et al.
0

Graph generation poses a significant challenge as it involves predicting a complete graph with multiple nodes and edges based on simply a given label. This task also carries fundamental importance to numerous real-world applications, including de-novo drug and molecular design. In recent years, several successful methods have emerged in the field of graph generation. However, these approaches suffer from two significant shortcomings: (1) the underlying Graph Neural Network (GNN) architectures used in these methods are often underexplored; and (2) these methods are often evaluated on only a limited number of metrics. To fill this gap, we investigate the expressiveness of GNNs under the context of the molecular graph generation task, by replacing the underlying GNNs of graph generative models with more expressive GNNs. Specifically, we analyse the performance of six GNNs in two different generative frameworks (GCPN and GraphAF), on six different molecular generative objectives on the ZINC-250k dataset. Through our extensive experiments, we demonstrate that advanced GNNs can indeed improve the performance of GCPN and GraphAF on molecular generation tasks, but GNN expressiveness is not a necessary condition for a good GNN-based generative model. Moreover, we show that GCPN and GraphAF with advanced GNNs can achieve state-of-the-art results across 17 other non-GNN-based graph generative approaches, such as variational autoencoders and Bayesian optimisation models, on the proposed molecular generative objectives (DRD2, Median1, Median2), which are important metrics for de-novo molecular design.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/05/2023

ChiENN: Embracing Molecular Chirality with Graph Neural Networks

Graph Neural Networks (GNNs) play a fundamental role in many deep learni...
research
06/13/2022

Evaluating Graph Generative Models with Contrastively Learned Features

A wide range of models have been proposed for Graph Generative Models, n...
research
02/08/2021

A Systematic Comparison Study on Hyperparameter Optimisation of Graph Neural Networks for Molecular Property Prediction

Graph neural networks (GNNs) have been proposed for a wide range of grap...
research
11/07/2022

Application of Graph Neural Networks and graph descriptors for graph classification

Graph classification is an important area in both modern research and in...
research
06/30/2022

Lookback for Learning to Branch

The expressive and computationally inexpensive bipartite Graph Neural Ne...
research
10/01/2021

Reconstruction for Powerful Graph Representations

Graph neural networks (GNNs) have limited expressive power, failing to r...
research
05/10/2023

Search for the UGLE Truth: An Investigation into Unsupervised GNN Learning Environments

Graph Neural Networks (GNNs) are a pertinent tool for any machine learni...

Please sign up or login with your details

Forgot password? Click here to reset