• Complex
  • Title
  • Keyword
  • Abstract
  • Scholars
  • Journal
  • ISSN
  • Conference
成果搜索

author:

Xiao, Shunxin (Xiao, Shunxin.) [1] | Lin, Huibin (Lin, Huibin.) [2] | Wang, Jianwen (Wang, Jianwen.) [3] | Qin, Xiaolong (Qin, Xiaolong.) [4] | Wang, Shiping (Wang, Shiping.) [5] (Scholars:王石平)

Indexed by:

SCIE

Abstract:

Data augmentation has been successfully utilized to refine the generalization capability and performance of learning algorithms in image and text analysis. With the rising focus on graph neural networks, an increasing number of researchers are employing various data augmentation approaches to improve graph learning techniques. Although significant improvements have been made, most of them are implemented by manipulating nodes or edges to generate modified graphs as augmented views, which might lose the information hidden in the input data. To address this issue, we propose a simple but effective data augmentation framework termed multi-relation augmentation designed for existing graph neural networks. Different from prior works, the designed model utilizes various methods to simulate multiple adjacency relationships (multi-relation) among nodes as augmented views instead of manipulating the original graph. The proposed augmentation framework can be formulated as three sub-modules, each offering distinct advantages: 1) The encoder module and projection module form a shared contrastive learning framework for both the original graph and all augmented views. Due to the shared mechanism, the proposed method can be simply applied to various graph learning models. 2) The designed task-specific module flexibly extends the proposed framework for various machine learning tasks. Experimental results on several databases show that the introduced augmentation framework improves the performance of existing graph neural networks on both semi-supervised node classification and unsupervised clustering tasks. It demonstrates that multiple relations mechanism is efficient for graph-based augmentation.

Keyword:

data augmentation Data augmentation Data models Deep learning graph neural network Graph neural networks Self-supervised learning semi-supervised learning Task analysis Training unsupervised learning

Community:

  • [ 1 ] [Xiao, Shunxin]Fuzhou Univ, Coll Comp & Data Sci, Fuzhou 350116, Peoples R China
  • [ 2 ] [Lin, Huibin]Fuzhou Univ, Coll Comp & Data Sci, Fuzhou 350116, Peoples R China
  • [ 3 ] [Wang, Jianwen]Fuzhou Univ, Coll Comp & Data Sci, Fuzhou 350116, Peoples R China
  • [ 4 ] [Wang, Shiping]Fuzhou Univ, Coll Comp & Data Sci, Fuzhou 350116, Peoples R China
  • [ 5 ] [Xiao, Shunxin]Fuzhou Univ, Fujian Prov Key Lab Network Comp & Intelligent In, Fuzhou 350116, Peoples R China
  • [ 6 ] [Lin, Huibin]Fuzhou Univ, Fujian Prov Key Lab Network Comp & Intelligent In, Fuzhou 350116, Peoples R China
  • [ 7 ] [Wang, Jianwen]Fuzhou Univ, Fujian Prov Key Lab Network Comp & Intelligent In, Fuzhou 350116, Peoples R China
  • [ 8 ] [Wang, Shiping]Fuzhou Univ, Fujian Prov Key Lab Network Comp & Intelligent In, Fuzhou 350116, Peoples R China
  • [ 9 ] [Qin, Xiaolong]Hangzhou Normal Univ, Dept Math, Hangzhou 311121, Peoples R China

Reprint 's Address:

  • 王石平

    [Wang, Shiping]Fuzhou Univ, Coll Comp & Data Sci, Fuzhou 350116, Peoples R China

Show more details

Related Keywords:

Related Article:

Source :

IEEE TRANSACTIONS ON EMERGING TOPICS IN COMPUTATIONAL INTELLIGENCE

ISSN: 2471-285X

Year: 2024

Issue: 5

Volume: 8

Page: 3614-3627

5 . 3 0 0

JCR@2023

Cited Count:

WoS CC Cited Count:

SCOPUS Cited Count:

ESI Highly Cited Papers on the List: 0 Unfold All

WanFang Cited Count:

Chinese Cited Count:

30 Days PV: 2

Online/Total:67/9997628
Address:FZU Library(No.2 Xuyuan Road, Fuzhou, Fujian, PRC Post Code:350116) Contact Us:0591-22865326
Copyright:FZU Library Technical Support:Beijing Aegean Software Co., Ltd. 闽ICP备05005463号-1