Multi-view Graph Convolutional Network with Fully Leveraging Consistency via Granular-ball-based Topology Construction, Feature Enhancement and Interactive Fusion
arXiv cs.CV / 3/31/2026
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Key Points
- The paper argues that multi-view learning can benefit substantially from leveraging “consistency” but existing GCN-based methods underuse it due to limitations in graph topology, intra-view feature alignment, and when fusion occurs across views.
- It proposes MGCN-FLC, which replaces typical KNN-based topology construction with a granular-ball-based approach to better capture inter-node consistency by clustering nodes with high internal similarity.
- It adds a feature enhancement module designed to explicitly model inter-feature consistency within each view to improve embedding quality.
- It introduces an interactive fusion mechanism that lets views interact deeply with one another, aiming to exploit inter-view consistency more effectively than post-hoc embedding fusion.
- Experiments across nine datasets indicate that MGCN-FLC achieves improved performance over state-of-the-art semi-supervised node classification methods.
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