LGFeb 17, 2023

Search to Capture Long-range Dependency with Stacking GNNs for Graph Classification

Tsinghua
arXiv:2302.08671v124 citationsh-index: 37
Originality Incremental advance
AI Analysis

This addresses the limitation of shallow GNNs in graph classification for tasks requiring long-range node interactions, though it is incremental as it builds on existing stacking and NAS methods.

The paper tackles the problem of capturing long-range dependencies in graph classification by proposing LRGNN, a stacking-based GNN that uses neural architecture search to design data-specific inter-layer connections, achieving state-of-the-art performance on five datasets.

In recent years, Graph Neural Networks (GNNs) have been popular in the graph classification task. Currently, shallow GNNs are more common due to the well-known over-smoothing problem facing deeper GNNs. However, they are sub-optimal without utilizing the information from distant nodes, i.e., the long-range dependencies. The mainstream methods in the graph classification task can extract the long-range dependencies either by designing the pooling operations or incorporating the higher-order neighbors, while they have evident drawbacks by modifying the original graph structure, which may result in information loss in graph structure learning. In this paper, by justifying the smaller influence of the over-smoothing problem in the graph classification task, we evoke the importance of stacking-based GNNs and then employ them to capture the long-range dependencies without modifying the original graph structure. To achieve this, two design needs are given for stacking-based GNNs, i.e., sufficient model depth and adaptive skip-connection schemes. By transforming the two design needs into designing data-specific inter-layer connections, we propose a novel approach with the help of neural architecture search (NAS), which is dubbed LRGNN (Long-Range Graph Neural Networks). Extensive experiments on five datasets show that the proposed LRGNN can achieve the best performance, and obtained data-specific GNNs with different depth and skip-connection schemes, which can better capture the long-range dependencies.

Code Implementations1 repo
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The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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