Layer Embedding Deep Fusion Graph Neural Network
About
Graph Neural Networks (GNNs) have demonstrated impressive performance in learning representations from graph-structured data. However, their message-passing mechanism inherently relies on the assumption of label consistency among connected nodes, limiting their applicability to low-homophily settings. Moreover, since message passing operates as a hierarchical diffusion process, GNNs face challenges in capturing long-range dependencies. As network depth increases, the structural noise along heterophilic edges tends to be amplified, resulting in over-smoothing. This issue becomes especially prominent in highly heterophilic graphs, where the propagation of inconsistent semantics across the topology continually exacerbates misaggregation. To address this issue, we propose a novel framework named Layer Embedding Deep Fusion Graph Neural Network (LEDF-GNN). Specifically, we design a Layer Embedding Deep Fusion (LEDF) operator that nonlinearly fuses multi-layer embeddings to capture inter-layer dependencies and effectively alleviate deep propagation degradation. Meanwhile, to mitigate structural heterophily, LEDF-GNN employs a Dual-Topology Parallel Strategy (DTPS) that simultaneously leverages the original and reconstructed topologies, allowing for adaptive structure-semantics co-optimization under diverse homophily conditions. Extensive semi-supervised classification experiments on the citation and image benchmarks demonstrate that, under both homophilic and heterophilic settings, LEDF-GNN consistently outperforms state-of-the-art baselines, validating its effectiveness and generalization capability across diverse graph types.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Node Classification | Chameleon | Accuracy53.2 | 867 | |
| Node Classification | Wisconsin | Accuracy60 | 864 | |
| Node Classification | Cornell | Accuracy55 | 851 | |
| Node Classification | Texas | Accuracy0.66 | 801 | |
| Node Classification | Squirrel | Accuracy39 | 786 | |
| Node Classification | Pubmed | Accuracy82.1 | 627 | |
| Node Classification | Cora | Accuracy84.7 | 583 | |
| Node-level classification | BlogCatalog | Accuracy0.796 | 70 | |
| Node Classification | ACM | Accuracy87.5 | 47 | |
| Node Classification | Arxiv 2023 | Accuracy81.3 | 33 |