Will More Expressive Graph Neural Networks do Better on Generative Tasks?
Xiandong Zou, Xiangyu Zhao, Pietro Li\`o, Yiren Zhao

TL;DR
This paper investigates whether more expressive Graph Neural Networks improve molecular graph generation, finding that while they enhance certain models' performance, expressiveness alone isn't sufficient for optimal results.
Contribution
The study systematically evaluates the impact of advanced GNN architectures on various graph generative models for molecular design, revealing nuanced effects on performance.
Findings
Advanced GNNs improve GCPN, GraphAF, and GraphEBM performance.
GNN expressiveness is not essential for effective molecular generation.
State-of-the-art results achieved on multiple molecular metrics.
Abstract
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…
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Taxonomy
TopicsMachine Learning in Materials Science · Computational Drug Discovery Methods · Protein Structure and Dynamics
MethodsGraph Neural Network
