LGAISPMLFeb 8, 2024

Training-Free Message Passing for Learning on Hypergraphs

arXiv:2402.05569v610 citationsh-index: 8ICLR
Originality Incremental advance
AI Analysis

This addresses a practical bottleneck for researchers and practitioners using hypergraphs in machine learning, offering a more efficient alternative to existing HNNs, though it is incremental as it builds on prior HNN methods.

The paper tackles the computational inefficiency of hypergraph neural networks (HNNs) by proposing a training-free message passing module (TF-MP-Module) that precomputes structural information, resulting in TF-HNN achieving competitive performance with significantly reduced training time, e.g., 10% higher accuracy on Trivago with only 1% of the training time.

Hypergraphs are crucial for modelling higher-order interactions in real-world data. Hypergraph neural networks (HNNs) effectively utilise these structures by message passing to generate informative node features for various downstream tasks like node classification. However, the message passing module in existing HNNs typically requires a computationally intensive training process, which limits their practical use. To tackle this challenge, we propose an alternative approach by decoupling the usage of hypergraph structural information from the model learning stage. This leads to a novel training-free message passing module, named TF-MP-Module, which can be precomputed in the data preprocessing stage, thereby reducing the computational burden. We refer to the hypergraph neural network equipped with our TF-MP-Module as TF-HNN. We theoretically support the efficiency and effectiveness of TF-HNN by showing that: 1) It is more training-efficient compared to existing HNNs; 2) It utilises as much information as existing HNNs for node feature generation; and 3) It is robust against the oversmoothing issue while using long-range interactions. Experiments based on seven real-world hypergraph benchmarks in node classification and hyperlink prediction show that, compared to state-of-the-art HNNs, TF-HNN exhibits both competitive performance and superior training efficiency. Specifically, on the large-scale benchmark, Trivago, TF-HNN outperforms the node classification accuracy of the best baseline by 10% with just 1% of the training time of that baseline.

Foundations

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