TY - JOUR
T1 - PLGNN
T2 - graph neural networks via adaptive feature perturbation and high-way links
AU - He, Meixia
AU - Zhu, Peican
AU - Liu, Yang
AU - Tang, Keke
N1 - Publisher Copyright:
© The Author(s) 2025.
PY - 2025/7
Y1 - 2025/7
N2 - Graph neural networks (GNNs) have exhibited remarkable performance in addressing diverse graph learning tasks. However, inevitable missing information in graph networks hinders GNNs from aggregating more abundant feature information, limiting GNNs’ performance. Moreover, missing information further exacerbates the risk of overfitting in GNNs. In this manuscript, we devote to presenting a novel framework, i.e., Graph Neural Networks via Adaptive Feature Perturbation and High-way Links (PLGNN), to tackle these challenges. We introduce an efficient high-way links strategy to augment the graph, which enhances the features aggregation of GNNs, thereby improving the performance of PLGNN. Subsequently, an adaptive feature perturbation strategy is proposed to reduce model’s overfitting and also improve robustness of PLGNN. Then, we perform experiments on ten real-world datasets to reveal the superiority of PLGNN, with the corresponding performance being compared with that of state-of-the-art ones. Specifically, the Accuracy improved by an average of 2.6% on five node classification datasets, and an average of 2.1% on five graph classification datasets.
AB - Graph neural networks (GNNs) have exhibited remarkable performance in addressing diverse graph learning tasks. However, inevitable missing information in graph networks hinders GNNs from aggregating more abundant feature information, limiting GNNs’ performance. Moreover, missing information further exacerbates the risk of overfitting in GNNs. In this manuscript, we devote to presenting a novel framework, i.e., Graph Neural Networks via Adaptive Feature Perturbation and High-way Links (PLGNN), to tackle these challenges. We introduce an efficient high-way links strategy to augment the graph, which enhances the features aggregation of GNNs, thereby improving the performance of PLGNN. Subsequently, an adaptive feature perturbation strategy is proposed to reduce model’s overfitting and also improve robustness of PLGNN. Then, we perform experiments on ten real-world datasets to reveal the superiority of PLGNN, with the corresponding performance being compared with that of state-of-the-art ones. Specifically, the Accuracy improved by an average of 2.6% on five node classification datasets, and an average of 2.1% on five graph classification datasets.
KW - Adaptive feature perturbation
KW - Graph neural networks
KW - High-way links
KW - Node/graph classification
UR - http://www.scopus.com/inward/record.url?scp=105004747253&partnerID=8YFLogxK
U2 - 10.1007/s40747-025-01929-2
DO - 10.1007/s40747-025-01929-2
M3 - 文章
AN - SCOPUS:105004747253
SN - 2199-4536
VL - 11
JO - Complex and Intelligent Systems
JF - Complex and Intelligent Systems
IS - 7
M1 - 288
ER -