Sparsifying Graph Neural Networks with Compressive Sensing

被引:0
|
作者
Islam, Mohammad Munzurul [1 ]
Alawad, Mohammed [1 ]
机构
[1] Wayne State Univ, Dept Elect & Comp Engn, Detroit, MI 48202 USA
关键词
Graph neural network; model compression; compressive sensing;
D O I
10.1145/3649476.3658780
中图分类号
TP3 [计算技术、计算机技术];
学科分类号
0812 ;
摘要
The computational complexity of graph neural networks (GNNs) presents a significant obstacle to their widespread adoption in various applications. As the size of the input graph increases, the number of parameters in GNN models grows rapidly, leading to increased training and inference times. Existing techniques for reducing GNN complexity, such as train and prune methods and sparse training, often struggle to balance model accuracy with efficiency. In this paper, we address this challenge by proposing a novel approach to sparsify GNNs using sparsity regularization and compressive sensing. By mapping GNN model parameters into a graph and applying sparsity regularization, we induce sparsity in parameter values. Leveraging compressive sensing with Bayesian learning, we identify critical parameters for sparsification, effectively reducing computational costs without sacrificing model accuracy. We evaluate our method on real-world graph datasets and compare it with state-of-the-art techniques. Experimental results demonstrate that our approach achieves higher accuracy while significantly reducing training sparsity and computational requirements, thereby mitigating the impact of large graph sizes on training and inference times. This work sheds light on the potential of compressive sensing for unlocking efficiency in graph-based learning tasks.
引用
下载
收藏
页码:315 / 318
页数:4
相关论文
共 50 条
  • [21] Studies on the sparsifying operator in compressive digital holography
    Bettens, Stijn
    Yan, Hao
    Blinder, David
    Ottevaere, Heidi
    Schretter, Colas
    Schelkens, Peter
    OPTICS EXPRESS, 2017, 25 (16): : 18656 - 18676
  • [22] Determination of Best Sparsifying Basis for Compressive Sampling
    Odejide, Olusegun O.
    Akujuobi, Cajetan M.
    Annamalai, Annamalai A.
    Fudge, Gerald L.
    INTERNATIONAL REVIEW OF ELECTRICAL ENGINEERING-IREE, 2009, 4 (02): : 327 - 335
  • [23] Combined Sparsifying Transforms for Compressive Image Fusion
    Wu, Chen
    Wang, Haixian
    Xu, Xinzhou
    Zhao, Li
    ADVANCES IN ELECTRICAL AND COMPUTER ENGINEERING, 2013, 13 (04) : 79 - 84
  • [24] Graph neural networks
    Corso G.
    Stark H.
    Jegelka S.
    Jaakkola T.
    Barzilay R.
    Nature Reviews Methods Primers, 4 (1):
  • [25] Graph neural networks
    不详
    NATURE REVIEWS METHODS PRIMERS, 2024, 4 (01):
  • [26] Graph Neural Networks for Graph Drawing
    Tiezzi, Matteo
    Ciravegna, Gabriele
    Gori, Marco
    IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS, 2024, 35 (04) : 4668 - 4681
  • [27] Graph Mining with Graph Neural Networks
    Jin, Wei
    WSDM '21: PROCEEDINGS OF THE 14TH ACM INTERNATIONAL CONFERENCE ON WEB SEARCH AND DATA MINING, 2021, : 1119 - 1120
  • [28] Graph Clustering with Graph Neural Networks
    Tsitsulin, Anton
    Palowitch, John
    Perozzi, Bryan
    Mueller, Emmanuel
    JOURNAL OF MACHINE LEARNING RESEARCH, 2023, 24
  • [29] Graphs, Convolutions, and Neural Networks: From Graph Filters to Graph Neural Networks
    Gama, Fernando
    Isufi, Elvin
    Leus, Geert
    Ribeiro, Alejandro
    IEEE SIGNAL PROCESSING MAGAZINE, 2020, 37 (06) : 128 - 138
  • [30] Dynamic Graph Neural Networks for Joint Terahertz based Sensing and Communication Optimization in Vehicular Networks
    Li, Xuefei
    Chen, Mingzhe
    Hu, Ye
    Zhang, Zhilong
    Liu, Danpu
    Mao, Shiwen
    2024 IEEE WIRELESS COMMUNICATIONS AND NETWORKING CONFERENCE, WCNC 2024, 2024,