LGOct 29, 2023

MAG-GNN: Reinforcement Learning Boosted Graph Neural Network

arXiv:2310.19142v118 citationsh-index: 10
Originality Incremental advance
AI Analysis

This work addresses efficiency bottlenecks in graph neural networks for researchers and practitioners in graph learning, though it is incremental as it builds on existing subgraph GNN methods.

The paper tackles the efficiency problem of subgraph GNNs, which sacrifice speed by enumerating all subgraphs, by proposing MAG-GNN, a reinforcement learning-based method that selects a small subset of subgraphs to achieve comparable expressivity, reducing exponential complexity to constant complexity while maintaining competitive performance and faster running times.

While Graph Neural Networks (GNNs) recently became powerful tools in graph learning tasks, considerable efforts have been spent on improving GNNs' structural encoding ability. A particular line of work proposed subgraph GNNs that use subgraph information to improve GNNs' expressivity and achieved great success. However, such effectivity sacrifices the efficiency of GNNs by enumerating all possible subgraphs. In this paper, we analyze the necessity of complete subgraph enumeration and show that a model can achieve a comparable level of expressivity by considering a small subset of the subgraphs. We then formulate the identification of the optimal subset as a combinatorial optimization problem and propose Magnetic Graph Neural Network (MAG-GNN), a reinforcement learning (RL) boosted GNN, to solve the problem. Starting with a candidate subgraph set, MAG-GNN employs an RL agent to iteratively update the subgraphs to locate the most expressive set for prediction. This reduces the exponential complexity of subgraph enumeration to the constant complexity of a subgraph search algorithm while keeping good expressivity. We conduct extensive experiments on many datasets, showing that MAG-GNN achieves competitive performance to state-of-the-art methods and even outperforms many subgraph GNNs. We also demonstrate that MAG-GNN effectively reduces the running time of subgraph GNNs.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes