Deep Graph Neural Networks via Posteriori-Sampling-based Node-Adaptive Residual Module

Bibliographic Details
Title: Deep Graph Neural Networks via Posteriori-Sampling-based Node-Adaptive Residual Module
Authors: Zhou, Jingbo, Du, Yixuan, Zhang, Ruqiong, Xia, Jun, Yu, Zhizhi, Zang, Zelin, Jin, Di, Yang, Carl, Zhang, Rui, Li, Stan Z.
Publication Year: 2023
Collection: Computer Science
Subject Terms: Computer Science - Machine Learning, Computer Science - Artificial Intelligence
More Details: Graph Neural Networks (GNNs), a type of neural network that can learn from graph-structured data through neighborhood information aggregation, have shown superior performance in various downstream tasks. However, as the number of layers increases, node representations become indistinguishable, which is known as over-smoothing. To address this issue, many residual methods have emerged. In this paper, we focus on the over-smoothing issue and related residual methods. Firstly, we revisit over-smoothing from the perspective of overlapping neighborhood subgraphs, and based on this, we explain how residual methods can alleviate over-smoothing by integrating multiple orders neighborhood subgraphs to avoid the indistinguishability of the single high-order neighborhood subgraphs. Additionally, we reveal the drawbacks of previous residual methods, such as the lack of node adaptability and severe loss of high-order neighborhood subgraph information, and propose a \textbf{Posterior-Sampling-based, Node-Adaptive Residual module (PSNR)}. We theoretically demonstrate that PSNR can alleviate the drawbacks of previous residual methods. Furthermore, extensive experiments verify the superiority of the PSNR module in fully observed node classification and missing feature scenarios. Our code is available at https://github.com/jingbo02/PSNR-GNN.
Comment: NeurIPS2024
Document Type: Working Paper
Access URL: http://arxiv.org/abs/2305.05368
Accession Number: edsarx.2305.05368
Database: arXiv
More Details
Description not available.