Supervised dimension reduction for ordinal predictors

被引:5
|
作者
Forzani, Liliana [1 ]
Garcia Arancibia, Rodrigo [2 ,3 ]
Llop, Pamela [1 ]
Tomassi, Diego [1 ]
机构
[1] Univ Nacl Litoral, Fac Ingn Quim, Researchers CONICET, Buenos Aires, DF, Argentina
[2] Inst Econ Aplicada Litoral FCE UNL, Buenos Aires, DF, Argentina
[3] Consejo Nacl Invest Cient & Tecn, Buenos Aires, DF, Argentina
关键词
Expectation-maximization (EM); Latent variables reduction subspace; SES index construction; Supervised classification; Variable selection; SLICED INVERSE REGRESSION; SOCIOECONOMIC-STATUS; CENTRAL SUBSPACE; VISUALIZATION; COMPONENTS;
D O I
10.1016/j.csda.2018.03.018
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
In applications involving ordinal predictors, common approaches to reduce dimensionality are either extensions of unsupervised techniques such as principal component analysis, or variable selection procedures that rely on modeling the regression function. A supervised dimension reduction method tailored to ordered categorical predictors is introduced which uses a model-based dimension reduction approach, inspired by extending sufficient dimension reductions to the context of latent Gaussian variables. The reduction is chosen without modeling the response as a function of the predictors and does not impose any distributional assumption on the response or on the response given the predictors. A likelihood-based estimator of the reduction is derived and an iterative expectation-maximization type algorithm is proposed to alleviate the computational load and thus make the method more practical. A regularized estimator, which simultaneously achieves variable selection and dimension reduction, is also presented. Performance of the proposed method is evaluated through simulations and a real data example for socioeconomic index construction, comparing favorably to widespread use techniques. (C) 2018 Elsevier B.V. All rights reserved.
引用
收藏
页码:136 / 155
页数:20
相关论文
共 50 条
  • [21] Sufficient dimension reduction for longitudinally measured predictors
    Pfeiffer, Ruth M.
    Forzani, Liliana
    Bura, Efstathia
    STATISTICS IN MEDICINE, 2012, 31 (22) : 2414 - 2427
  • [22] SUFFICIENT DIMENSION REDUCTION IN REGRESSIONS WITH MISSING PREDICTORS
    Zhu, Liping
    Wang, Tao
    Zhu, Lixing
    STATISTICA SINICA, 2012, 22 (04) : 1611 - 1637
  • [23] SUFFICIENT DIMENSION REDUCTION UNDER DIMENSION-REDUCTION-BASED IMPUTATION WITH PREDICTORS MISSING AT RANDOM
    Yang, Xiaojie
    Wang, Qihua
    STATISTICA SINICA, 2019, 29 (04) : 1751 - 1778
  • [24] Supervised dimension reduction of intrinsically low-dimensional data
    Vlassis, N
    Motomura, Y
    Kröse, B
    NEURAL COMPUTATION, 2002, 14 (01) : 191 - 215
  • [25] High Dimensional Bayesian Optimization via Supervised Dimension Reduction
    Zhang, Miao
    Li, Huiqi
    Su, Steven
    PROCEEDINGS OF THE TWENTY-EIGHTH INTERNATIONAL JOINT CONFERENCE ON ARTIFICIAL INTELLIGENCE, 2019, : 4292 - 4298
  • [26] Supervised dimension reduction by local neighborhood optimization for image processing
    Zhao L.
    Wang H.
    Wang J.
    Recent Patents on Engineering, 2019, 13 (04) : 334 - 337
  • [27] Bayesian inverse regression for supervised dimension reduction with small datasets
    Cai, Xin
    Lin, Guang
    Li, Jinglai
    JOURNAL OF STATISTICAL COMPUTATION AND SIMULATION, 2021, 91 (14) : 2817 - 2832
  • [28] Maximizing adjusted covariance: new supervised dimension reduction for classification
    Park, Hyejoon
    Kim, Hyunjoong
    Lee, Yung-Seop
    COMPUTATIONAL STATISTICS, 2025, 40 (01) : 573 - 599
  • [29] Supervised ML Algorithms in the High Dimensional Applications for Dimension Reduction
    Tabassum, Hina
    Iqbal, Muhammad Mutahir
    Shehzad, Muhammad Ahmed
    Asghar, Nabeel
    Yusuf, Mohammed
    Kilai, Mutua
    Aldallal, Ramay
    MATHEMATICAL PROBLEMS IN ENGINEERING, 2022, 2022
  • [30] Sufficient dimension reduction in multivariate regressions with categorical predictors
    Hilafu, Haileab
    Yin, Xiangrong
    COMPUTATIONAL STATISTICS & DATA ANALYSIS, 2013, 63 : 139 - 147