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TIDE: Time Derivative Diffusion for Deep Learning on Graphs

A novel TIDE framework for graph neural networks optimizes diffusion across nodes, improving long-distance communication and outperforming state-of-the-art methods on benchmarks.

Year
2022
Venue
arXiv 2022
Authors
3
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arxiv.org/abs/2212.02483v3ARXIV-DEFAULT
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Abstract

A prominent paradigm for graph neural networks is based on the message-passing framework. In this framework, information communication is realized only between neighboring nodes. The challenge of approaches that use this paradigm is to ensure efficient and accurate long-distance communication between nodes, as deep convolutional networks are prone to oversmoothing. In this paper, we present a novel method based on time derivative graph diffusion (TIDE) to overcome these structural limitations of the message-passing framework. Our approach allows for optimizing the spatial extent of diffusion across various tasks and network channels, thus enabling medium and long-distance communication efficiently. Furthermore, we show that our architecture design also enables local message-passing and thus inherits from the capabilities of local message-passing approaches. We show that on both widely used graph benchmarks and synthetic mesh and graph datasets, the proposed framework outperforms state-of-the-art methods by a significant margin

Authors

3