Graph Neural Networks (GNNs) had been demonstrated to be inherently susceptible to the problems of over-smoothing and over-squashing. These issues prohibit the ability of GNNs to model complex graph interactions by limiting their effectiveness at taking into account distant information. Our study reveals the key connection between the local graph geometry and the occurrence of both of these issues, thereby providing a unified framework for studying them at a local scale using the Ollivier's Ricci curvature. Based on our theory, a number of principled methods are proposed to alleviate the over-smoothing and over-squashing issues.
翻译:事实证明,神经网络图(GNNs)在本质上易受过度移动和过度拥挤问题的影响,这些问题限制了GNNs模拟复杂图形互动的能力,限制了它们考虑到远方信息的效力,我们的研究揭示了本地图形几何与这两个问题发生之间的关键联系,从而提供了一个使用Ollivier的Ricci曲线进行局部规模研究的统一框架。