Node-wise Filtering in Graph Neural Networks: A Mixture of Experts Approach (2406.03464v1)
Abstract: Graph Neural Networks (GNNs) have proven to be highly effective for node classification tasks across diverse graph structural patterns. Traditionally, GNNs employ a uniform global filter, typically a low-pass filter for homophilic graphs and a high-pass filter for heterophilic graphs. However, real-world graphs often exhibit a complex mix of homophilic and heterophilic patterns, rendering a single global filter approach suboptimal. In this work, we theoretically demonstrate that a global filter optimized for one pattern can adversely affect performance on nodes with differing patterns. To address this, we introduce a novel GNN framework Node-MoE that utilizes a mixture of experts to adaptively select the appropriate filters for different nodes. Extensive experiments demonstrate the effectiveness of Node-MoE on both homophilic and heterophilic graphs.
- Haoyu Han (23 papers)
- Juanhui Li (12 papers)
- Wei Huang (318 papers)
- Xianfeng Tang (62 papers)
- Hanqing Lu (34 papers)
- Chen Luo (77 papers)
- Hui Liu (481 papers)
- Jiliang Tang (204 papers)