Dynamic Graph Structure Learning via Resistance Curvature Flow
Chaoqun Fei, Huanjiang Liu, Tinglve Zhou, Yangyang Li, Tianyong Hao

TL;DR
This paper introduces Resistance Curvature Flow, a computationally efficient method for dynamic graph structure learning that enhances geometric representation learning by capturing intrinsic data manifold properties.
Contribution
It proposes RCF, a novel curvature flow method based on effective resistance, reducing computational complexity and enabling scalable, dynamic graph optimization in deep learning.
Findings
Over 100x faster than Ollivier-Ricci Curvature Flow
Improves representation quality in manifold learning
Enhances downstream task performance
Abstract
Geometric Representation Learning (GRL) aims to approximate the non-Euclidean topology of high-dimensional data through discrete graph structures, grounded in the manifold hypothesis. However, traditional static graph construction methods based on Euclidean distance often fail to capture the intrinsic curvature characteristics of the data manifold. Although Ollivier-Ricci Curvature Flow (OCF) has proven to be a powerful tool for dynamic topological optimization, its core reliance on Optimal Transport (Wasserstein distance) leads to prohibitive computational complexity, severely limiting its application in large-scale datasets and deep learning frameworks. To break this bottleneck, this paper proposes a novel geometric evolution framework: Resistance Curvature Flow (RCF). Leveraging the concept of effective resistance from circuit physics, RCF transforms expensive curvature optimization…
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Taxonomy
TopicsTopological and Geometric Data Analysis · Advanced Graph Neural Networks · 3D Shape Modeling and Analysis
