LGMLDec 2, 2019

Continuous Graph Neural Networks

arXiv:1912.00967v3197 citations
Originality Incremental advance
AI Analysis

This work addresses over-smoothing issues in graph neural networks for researchers and practitioners in graph-based machine learning, representing an incremental advancement by building on existing dynamical systems connections.

The paper tackles the problem of over-smoothing in graph neural networks by proposing continuous graph neural networks (CGNN), which generalize discrete dynamics to continuous ones, enabling deeper networks that capture long-range dependencies and achieve improved performance in node classification tasks.

This paper builds on the connection between graph neural networks and traditional dynamical systems. We propose continuous graph neural networks (CGNN), which generalise existing graph neural networks with discrete dynamics in that they can be viewed as a specific discretisation scheme. The key idea is how to characterise the continuous dynamics of node representations, i.e. the derivatives of node representations, w.r.t. time. Inspired by existing diffusion-based methods on graphs (e.g. PageRank and epidemic models on social networks), we define the derivatives as a combination of the current node representations, the representations of neighbors, and the initial values of the nodes. We propose and analyse two possible dynamics on graphs---including each dimension of node representations (a.k.a. the feature channel) change independently or interact with each other---both with theoretical justification. The proposed continuous graph neural networks are robust to over-smoothing and hence allow us to build deeper networks, which in turn are able to capture the long-range dependencies between nodes. Experimental results on the task of node classification demonstrate the effectiveness of our proposed approach over competitive baselines.

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