Generalized Laplacian Eigenmaps

被引:0
|
作者
Zhu, Hao [1 ]
Koniusz, Piotr [1 ,2 ]
机构
[1] CSIRO, Data61, Canberra, Australia
[2] Australian Natl Univ, Canberra, Australia
关键词
D O I
暂无
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Graph contrastive learning attracts/disperses node representations for similar/dissimilar node pairs under some notion of similarity. It may be combined with a low-dimensional embedding of nodes to preserve intrinsic and structural properties of a graph. COLES, a recent graph contrastive method combines traditional graph embedding and negative sampling into one framework. COLES in fact minimizes the trace difference between the within-class scatter matrix encapsulating the graph connectivity and the total scatter matrix encapsulating negative sampling. In this paper, we propose a more essential framework for graph embedding, called Generalized Laplacian EigeNmaps (GLEN), which learns a graph representation by maximizing the rank difference between the total scatter matrix and the within-class scatter matrix, resulting in the minimum class separation guarantee. However, the rank difference minimization is an NP-hard problem. Thus, we replace the trace difference that corresponds to the difference of nuclear norms by the difference of LogDet expressions, which we argue is a more accurate surrogate for the NP-hard rank difference than the trace difference. While enjoying a lesser computational cost, the difference of LogDet terms is lower-bounded by the Affine-invariant Rviemannian metric (AIRM) and upper-bounded by AIRM scaled by the factor of root m. We show on popular benchmarks/backbones that GLEN offers favourable accuracy/scalability compared to state-of-the-art baselines.
引用
收藏
页数:15
相关论文
共 50 条
  • [1] Generalized Laplacian Eigenmaps for Modeling and Tracking Human Motions
    Martinez-del-Rincon, Jesus
    Lewandowski, Michal
    Nebel, Jean-Christophe
    Makris, Dimitrios
    IEEE TRANSACTIONS ON CYBERNETICS, 2014, 44 (09) : 1646 - 1660
  • [2] Generalized Low-Computational Cost Laplacian Eigenmaps
    Salazar-Castro, J. A.
    Pena, D. F.
    Basante, C.
    Ortega, C.
    Cruz-Cruz, L.
    Revelo-Fuelagan, J.
    Blanco-Valencia, X. P.
    Castellanos-Dominguez, G.
    Peluffo-Ordonez, D. H.
    INTELLIGENT DATA ENGINEERING AND AUTOMATED LEARNING - IDEAL 2018, PT I, 2018, 11314 : 661 - 669
  • [3] Contrastive Laplacian Eigenmaps
    Zhu, Hao
    Sun, Ke
    Koniusz, Piotr
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 34 (NEURIPS 2021), 2021, 34
  • [4] On the regularized Laplacian eigenmaps
    Cao, Ying
    Chen, Di-Rong
    JOURNAL OF STATISTICAL PLANNING AND INFERENCE, 2012, 142 (07) : 1627 - 1643
  • [5] A Note on Laplacian Eigenmaps
    潘荣英
    张晓东
    Journal of Shanghai Jiaotong University(Science), 2009, 14 (05) : 632 - 634
  • [6] Laplacian Eigenmaps of Graphs
    Wang Tianfei
    Yang Jin
    Li Bin
    PROCEEDINGS OF THE FOURTH INTERNATIONAL CONFERENCE OF MODELLING AND SIMULATION (ICMS2011), VOL 1, 2011, : 247 - 250
  • [7] A note on laplacian eigenmaps
    Pan R.-Y.
    Zhang X.-D.
    Journal of Shanghai Jiaotong University (Science), 2009, 14 (5) : 632 - 634
  • [8] An online generalized eigenvalue version of Laplacian Eigenmaps for visual big data
    Malik, Zeeshan Khawar
    Hussain, Amir
    Wu, Jonathan
    NEUROCOMPUTING, 2016, 173 : 127 - 136
  • [9] IMAGE ANALYSIS WITH REGULARIZED LAPLACIAN EIGENMAPS
    Tompkins, Frank
    Wolfe, Patrick J.
    2010 IEEE INTERNATIONAL CONFERENCE ON IMAGE PROCESSING, 2010, : 1913 - 1916
  • [10] Laplacian eigenmaps for multimodal groupwise image registration
    Polfliet, Mathias
    Klein, Stefan
    Niessen, Wiro J.
    Vandemeulebroucke, Jef
    MEDICAL IMAGING 2017: IMAGE PROCESSING, 2017, 10133