Litcius/Paper detail

A Multi-Modal Hypergraph Neural Network via Parametric Filtering and Feature Sampling

Zijian Liu, Yang Luo, Xitong Pu, Geyong Min, Chunbo Luo

2023IEEE Transactions on Big Data12 citationsDOI

Abstract

In the real world, relationships between objects are often complex, involving multiple variables and modes. Hypergraph neural networks possess the capability to capture and represent such intricate relationships by deriving and inheriting their graph-based counterparts. Nevertheless, both graph and hypergraph neural networks suffer from the problem of over-smoothing when multiple graph convolution layers are stacked. To address this issue, this article introduces the Multi-modal Hypergraph Neural Network with Parametric Filtering and Feature Sampling (MHNet) to encode complex hypergraph features and mitigate over-smoothing. The proposed approach uses hypergraph structures to model high-order and multi-modal data correlations, a polynomial hypergraph filter to dynamically extract multi-scale node features through parametric polynomial fitting, and a feature sampling strategy to learn from sparse and labeled samples while avoiding overfitting. Experimental results on four hypergraph datasets and two multi-modal visual datasets demonstrate that the proposed MHNet outperforms state-of-the-art algorithms.

Topics & Concepts

HypergraphComputer scienceOverfittingSmoothingPattern recognition (psychology)Parametric statisticsArtificial neural networkFeature (linguistics)ModalArtificial intelligenceAlgorithmTheoretical computer scienceData miningMathematicsDiscrete mathematicsComputer visionChemistryStatisticsPolymer chemistryLinguisticsPhilosophyMultimodal Machine Learning ApplicationsAdvanced Graph Neural NetworksData Visualization and Analytics
A Multi-Modal Hypergraph Neural Network via Parametric Filtering and Feature Sampling | Litcius