A graph regularized dimension reduction method for out-of-sample data

被引:11
|
作者
Tang, Mengfan [1 ]
Nie, Feiping [2 ,3 ]
Jain, Ramesh [1 ]
机构
[1] Univ Calif Irvine, Dept Comp Sci, Irvine, CA 92697 USA
[2] Northwestern Polytech Univ, Sch Comp Sci, Xian, Peoples R China
[3] Northwestern Polytech Univ, Ctr OPT IMagery Anal & Learning OPTIMAL, Xian, Peoples R China
关键词
Dimension reduction; Out-of-sample data; Graph regularized PCA; Manifold learning; Clustering; RECOGNITION; EIGENMAPS;
D O I
10.1016/j.neucom.2016.11.012
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Among various dimension reduction techniques, Principal Component Analysis (PCA) is specialized in treating vector data, whereas Laplacian embedding is often employed for embedding graph data. Moreover, graph regularized PCA, a combination of both techniques, has also been developed to assist the learning of a low dimensional representation of vector data by incorporating graph data. However, these approaches are confronted by the out-of-sample problem: each time when new data is added, it has to be combined with the old data before being fed into the algorithm to re-compute the eigenvectors, leading to enormous computational cost. In order to address this problem, we extend the graph regularized PCA to the graph regularized linear regression PCA (grlrPCA). grlrPCA eliminates the redundant calculation on the old data by first learning a linear function and then directly applying it to the new data for its dimension reduction. Furthermore, we derive an efficient iterative algorithm to solve grlrPCA optimization problem and show the close relatedness of grlrPCA and unsupervised Linear Discriminant Analysis at infinite regularization parameter limit. The evaluations of multiple metrics on seven realistic datasets demonstrate that grlrPCA outperforms established unsupervised dimension reduction algorithms.
引用
收藏
页码:58 / 63
页数:6
相关论文
共 50 条
  • [41] SYMMETRIC RANK-ONE UPDATES FROM PARTIAL SPECTRUM WITH AN APPLICATION TO OUT-OF-SAMPLE EXTENSION
    Mitz, Roy
    Sharon, Nir
    Shkolnisky, Yoel
    SIAM JOURNAL ON MATRIX ANALYSIS AND APPLICATIONS, 2019, 40 (03) : 973 - 997
  • [42] Adaptive graph regularized nonnegative matrix factorization for data representation
    Lin Zhang
    Zhonghua Liu
    Jiexin Pu
    Bin Song
    Applied Intelligence, 2020, 50 : 438 - 447
  • [43] Error Graph Regularized Nonnegative Matrix Factorization for Data Representation
    Qiang Zhu
    Meijun Zhou
    Junping Liu
    Neural Processing Letters, 2023, 55 : 7321 - 7335
  • [44] Error Graph Regularized Nonnegative Matrix Factorization for Data Representation
    Zhu, Qiang
    Zhou, Meijun
    Liu, Junping
    NEURAL PROCESSING LETTERS, 2023, 55 (06) : 7321 - 7335
  • [45] GRAPH REGULARIZED NONNEGATIVE TUCKER DECOMPOSITION FOR TENSOR DATA REPRESENTATION
    Qiu, Yuning
    Zhou, Guoxu
    Zhang, Yu
    Xie, Shengli
    2019 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH AND SIGNAL PROCESSING (ICASSP), 2019, : 8613 - 8617
  • [46] Graph Regularized Discriminative Joint Concept Factorization for Data Representation
    Long, Xianzhong
    Cheng, Cheng
    ARTIFICIAL INTELLIGENCE (ICAI 2018), 2018, 888 : 69 - 83
  • [47] Method for the dimension reduction of rotor fault data sets by using ISOMAP and LLE
    Chen P.
    Zhao R.
    Peng B.
    Li K.
    Zhao, Rongzhen (zhaorongzhen@lut.cn), 1600, Chinese Vibration Engineering Society (36): : 45 - 50and156
  • [48] Data-driven method for dimension reduction of nonlinear randomly vibrating systems
    Li, Junyin
    Wang, Yong
    Jin, Xiaoling
    Huang, Zhilong
    Elishakoff, Isaac
    NONLINEAR DYNAMICS, 2021, 105 (02) : 1297 - 1311
  • [49] Adaptive graph regularized nonnegative matrix factorization for data representation
    Zhang, Lin
    Liu, Zhonghua
    Pu, Jiexin
    Song, Bin
    APPLIED INTELLIGENCE, 2020, 50 (02) : 438 - 447
  • [50] Data-driven method for dimension reduction of nonlinear randomly vibrating systems
    Junyin Li
    Yong Wang
    Xiaoling Jin
    Zhilong Huang
    Isaac Elishakoff
    Nonlinear Dynamics, 2021, 105 : 1297 - 1311