Flexible data representation with graph convolution for semi-supervised learning

被引:0
|
作者
Dornaika, Fadi [1 ,2 ]
机构
[1] Univ Basque Country, UPV EHU, San Sebastian, Spain
[2] Ikerbasque, Basque Fdn Sci, Bilbao, Spain
来源
NEURAL COMPUTING & APPLICATIONS | 2021年 / 33卷 / 12期
关键词
Graph-based embedding; Semi-supervised learning; Graph convolutions; Discriminant embedding; Pattern recognition; NONLINEAR DIMENSIONALITY REDUCTION; MANIFOLD REGULARIZATION; FRAMEWORK; PROJECTION; ROBUST;
D O I
10.1007/s00521-020-05462-w
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
This paper introduces a scheme for semi-supervised data representation. It proposes a flexible nonlinear embedding model that imitates the principle of spectral graph convolutions. Structured data are exploited in order to determine nonlinear and linear models. The introduced scheme takes advantage of data graphs at two different levels. First, it incorporates manifold regularization that is naturally encoded by the graph itself. Second, the regression model is built on the convolved data samples that are obtained by the joint use of the data and their associated graph. The proposed semi-supervised embedding can tackle challenges related to over-fitting in image data spaces. The proposed graph convolution-based semi-supervised embedding paves the way to new theoretical and application perspectives related to the nonlinear embedding. Indeed, building flexible models that adopt convolved data samples can enhance both the data representation and the final performance of the learning system. Several experiments are conducted on six image datasets for comparing the introduced scheme with many state-of-art semi-supervised approaches. These experimental results show the effectiveness of the introduced data representation scheme.
引用
收藏
页码:6851 / 6863
页数:13
相关论文
共 50 条
  • [21] Learning Semi-Supervised Representation Towards a Unified Optimization Framework for Semi-Supervised Learning
    Li, Chun-Guang
    Lin, Zhouchen
    Zhang, Honggang
    Guo, Jun
    2015 IEEE INTERNATIONAL CONFERENCE ON COMPUTER VISION (ICCV), 2015, : 2767 - 2775
  • [22] Efficiently Learning the Graph for Semi-supervised Learning
    Sharma, Dravyansh
    Jones, Maxwell
    UNCERTAINTY IN ARTIFICIAL INTELLIGENCE, 2023, 216 : 1900 - 1910
  • [23] Semi-supervised learning by sparse representation
    Yan, Shuicheng
    Wang, Huan
    Society for Industrial and Applied Mathematics - 9th SIAM International Conference on Data Mining 2009, Proceedings in Applied Mathematics, 2009, 2 : 788 - 797
  • [24] Graph-Based Semi-Supervised Learning on Evolutionary Data
    Song, Yanglei
    Yang, Yifei
    Dou, Weibei
    Zhang, Changshui
    INTELLIGENCE SCIENCE AND BIG DATA ENGINEERING: BIG DATA AND MACHINE LEARNING TECHNIQUES, ISCIDE 2015, PT II, 2015, 9243 : 467 - 476
  • [25] Deep data representation with feature propagation for semi-supervised learning
    Dornaika, F.
    Hoang, V. Truong
    INTERNATIONAL JOURNAL OF MACHINE LEARNING AND CYBERNETICS, 2023, 14 (04) : 1303 - 1316
  • [26] Deep data representation with feature propagation for semi-supervised learning
    F. Dornaika
    V. Truong Hoang
    International Journal of Machine Learning and Cybernetics, 2023, 14 : 1303 - 1316
  • [27] Joint sparse graph and flexible embedding for graph-based semi-supervised learning
    Dornaika, F.
    El Traboulsi, Y.
    NEURAL NETWORKS, 2019, 114 : 91 - 95
  • [28] NGAT: attention in breadth and depth exploration for semi-supervised graph representation learning
    Hu, Jianke
    Zhang, Yin
    FRONTIERS OF INFORMATION TECHNOLOGY & ELECTRONIC ENGINEERING, 2022, 23 (03) : 409 - 421
  • [29] Collaborative Representation Graph for Semi-Supervised Image Classification
    Guo, Junjun
    Li, Zhiyong
    Mu, Jianjun
    IEICE TRANSACTIONS ON FUNDAMENTALS OF ELECTRONICS COMMUNICATIONS AND COMPUTER SCIENCES, 2015, E98A (08) : 1871 - 1874
  • [30] Joint graph and reduced flexible manifold embedding for scalable semi-supervised learning
    Ibrahim, Z.
    Bosaghzadeh, A.
    Dornaika, F.
    ARTIFICIAL INTELLIGENCE REVIEW, 2023, 56 (09) : 9471 - 9495