Learning to Model Graph Structural Information on MLPs via Graph Structure Self-Contrasting

图形 计算机科学 人工智能 理论计算机科学
作者
Lirong Wu,Haitao Lin,Guojiang Zhao,Cheng Tan,Stan Z. Li
出处
期刊:IEEE transactions on neural networks and learning systems [Institute of Electrical and Electronics Engineers]
卷期号:: 1-12
标识
DOI:10.1109/tnnls.2024.3458405
摘要

Recent years have witnessed great success in handling graph-related tasks with graph neural networks (GNNs). However, most existing GNNs are based on message passing to perform feature aggregation and transformation, where the structural information is explicitly involved in the forward propagation by coupling with node features through graph convolution at each layer. As a result, subtle feature noise or structure perturbation may cause severe error propagation, resulting in extremely poor robustness. In this article, we rethink the roles played by graph structural information in graph data training and identify that message passing is not the only path to modeling structural information. Inspired by this, we propose a simple but effective graph structure self-contrasting (GSSC) framework that learns graph structural information without message passing. The proposed framework is based purely on multilayer perceptrons (MLPs), where the structural information is only implicitly incorporated as prior knowledge to guide the computation of supervision signals, substituting the explicit message propagation as in GNNs. Specifically, it first applies structural sparsification (STR-Sparse) to remove potentially uninformative or noisy edges in the neighborhood, and then performs structural self-contrasting (STR-Contrast) in the sparsified neighborhood to learn robust node representations. Finally, STR-Sparse and self-contrasting are formulated as a bilevel optimization problem and solved in a unified framework. Extensive experiments have qualitatively and quantitatively demonstrated that the GSSC framework can produce truly encouraging performance with better generalization and robustness than other leading competitors. Codes are publicly available at: https://github.com/LirongWu/GSSC.
最长约 10秒,即可获得该文献文件

科研通智能强力驱动
Strongly Powered by AbleSci AI
更新
大幅提高文件上传限制,最高150M (2024-4-1)

科研通是完全免费的文献互助平台,具备全网最快的应助速度,最高的求助完成率。 对每一个文献求助,科研通都将尽心尽力,给求助人一个满意的交代。
实时播报
1秒前
田様应助Pt-SACs采纳,获得10
2秒前
KYN完成签到,获得积分10
3秒前
上官若男应助贾克斯采纳,获得10
4秒前
wenchao发布了新的文献求助10
4秒前
贪玩的万仇完成签到 ,获得积分10
5秒前
余鱼鱼完成签到,获得积分10
5秒前
AUMY驳回了都是应助
10秒前
594778089完成签到,获得积分20
11秒前
Pretrial完成签到 ,获得积分10
11秒前
JamesPei应助刘笨笨采纳,获得10
11秒前
13秒前
开心白凝完成签到 ,获得积分10
15秒前
fenmiao完成签到,获得积分20
16秒前
轻松的悟空完成签到 ,获得积分10
18秒前
小鹿斑比发布了新的文献求助10
19秒前
仁爱水之完成签到 ,获得积分10
25秒前
共享精神应助自由采纳,获得10
27秒前
Pearl应助小鹿斑比采纳,获得10
28秒前
28秒前
29秒前
32秒前
32秒前
weiweiwei完成签到,获得积分10
33秒前
小鹿斑比完成签到,获得积分10
33秒前
淀粉肠完成签到 ,获得积分10
34秒前
刘一三发布了新的文献求助10
34秒前
饼子发布了新的文献求助10
35秒前
chengmin完成签到 ,获得积分10
35秒前
37秒前
38秒前
saberLee完成签到,获得积分10
39秒前
Pt-SACs发布了新的文献求助10
42秒前
自由发布了新的文献求助10
43秒前
45秒前
hsh完成签到 ,获得积分10
49秒前
Pt-SACs完成签到,获得积分10
51秒前
刘笨笨发布了新的文献求助10
51秒前
悦耳的绿旋完成签到,获得积分10
51秒前
四月完成签到,获得积分10
56秒前
高分求助中
LNG地上式貯槽指針 (JGA指 ; 108) 1000
LNG地下式貯槽指針(JGA指-107)(LNG underground storage tank guidelines) 1000
Generalized Linear Mixed Models 第二版 1000
Preparation and Characterization of Five Amino-Modified Hyper-Crosslinked Polymers and Performance Evaluation for Aged Transformer Oil Reclamation 700
Operative Techniques in Pediatric Orthopaedic Surgery 510
九经直音韵母研究 500
Full waveform acoustic data processing 500
热门求助领域 (近24小时)
化学 医学 材料科学 生物 工程类 有机化学 生物化学 物理 内科学 纳米技术 计算机科学 化学工程 复合材料 基因 遗传学 物理化学 催化作用 免疫学 细胞生物学 电极
热门帖子
关注 科研通微信公众号,转发送积分 2927056
求助须知:如何正确求助?哪些是违规求助? 2576072
关于积分的说明 6953484
捐赠科研通 2227175
什么是DOI,文献DOI怎么找? 1183684
版权声明 589277
科研通“疑难数据库(出版商)”最低求助积分说明 579287