Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Robust Graph Structure Learning under Heterophily

About

Graph is a fundamental mathematical structure in characterizing relations between different objects and has been widely used on various learning tasks. Most methods implicitly assume a given graph to be accurate and complete. However, real data is inevitably noisy and sparse, which will lead to inferior results. Despite the remarkable success of recent graph representation learning methods, they inherently presume that the graph is homophilic, and largely overlook heterophily, where most connected nodes are from different classes. In this regard, we propose a novel robust graph structure learning method to achieve a high-quality graph from heterophilic data for downstream tasks. We first apply a high-pass filter to make each node more distinctive from its neighbors by encoding structure information into the node features. Then, we learn a robust graph with an adaptive norm characterizing different levels of noise. Afterwards, we propose a novel regularizer to further refine the graph structure. Clustering and semi-supervised classification experiments on heterophilic graphs verify the effectiveness of our method.

Xuanting Xie, Zhao Kang, Wenyu Chen• 2024

Related benchmarks

TaskDatasetResultRank
Graph ClusteringChameleon
Accuracy38.52
14
Graph ClusteringCornell
Accuracy57.44
13
Graph ClusteringWisconsin
Accuracy56.6
13
Graph ClusteringWashington
Accuracy66.09
12
Graph ClusteringSquirrel
Accuracy0.3074
9
Graph ClusteringRoman-Empire
Accuracy (ACC)34.57
8
Showing 6 of 6 rows

Other info

Follow for update