AIC for the Lasso in generalized linear models

被引:11
|
作者
Ninomiya, Yoshiyuki [1 ]
Kawano, Shuichi [2 ]
机构
[1] Kyushu Univ, Inst Math Ind, Nishi Ku, Fukuoka 8190395, Japan
[2] Univ Electrocommun, Grad Sch Informat & Engn, Chofu, Tokyo 1828585, Japan
来源
ELECTRONIC JOURNAL OF STATISTICS | 2016年 / 10卷 / 02期
关键词
Convexity lemma; information criterion; Kullback-Leibler divergence; statistical asymptotic theory; tuning parameter; variable selection; TUNING PARAMETER SELECTION; INFORMATION CRITERION; REGRESSION; ASYMPTOTICS; ESTIMATORS; SHRINKAGE; RECOVERY;
D O I
10.1214/16-EJS1179
中图分类号
O21 [概率论与数理统计]; C8 [统计学];
学科分类号
020208 ; 070103 ; 0714 ;
摘要
The Lasso is a popular regularization method that can simultaneously do estimation and model selection. It contains a regularization parameter, and several information criteria have been proposed for selecting its proper value. While any of them would assure consistency in model selection, we have no appropriate rule to choose between the criteria. Meanwhile, a finite correction to the AIC has been provided in a Gaussian regression setting. The finite correction is theoretically assured from the viewpoint not of the consistency but of minimizing the prediction error and does not have the above-mentioned difficulty. Our aim is to derive such a criterion for the Lasso in generalized linear models. Towards this aim, we derive a criterion from the original definition of the AIC, that is, an asymptotically unbiased estimator of the Kullback-Leibler divergence. This becomes the finite correction in the Gaussian regression setting, and so our criterion can be regarded as its generalization. Our criterion can be easily obtained and requires fewer computational tasks than does cross-validation, but simulation studies and real data analyses indicate that its performance is almost the same as or superior to that of cross-validation. Moreover, our criterion is extended for a class of other regularization methods.
引用
收藏
页码:2537 / 2560
页数:24
相关论文
共 50 条
  • [1] AIC for the group Lasso in generalized linear models
    Satoshi Komatsu
    Yuta Yamashita
    Yoshiyuki Ninomiya
    [J]. Japanese Journal of Statistics and Data Science, 2019, 2 : 545 - 558
  • [2] AIC for the group Lasso in generalized linear models
    Komatsu, Satoshi
    Yamashita, Yuta
    Ninomiya, Yoshiyuki
    [J]. JAPANESE JOURNAL OF STATISTICS AND DATA SCIENCE, 2019, 2 (02) : 545 - 558
  • [3] Independently Interpretable Lasso for Generalized Linear Models
    Takada, Masaaki
    Suzuki, Taiji
    Fujisawa, Hironori
    [J]. NEURAL COMPUTATION, 2020, 32 (06) : 1168 - 1221
  • [4] Generalized fused Lasso for grouped data in generalized linear models
    Ohishi, Mineaki
    [J]. STATISTICS AND COMPUTING, 2024, 34 (04)
  • [5] High-dimensional generalized linear models and the lasso
    van de Geer, Sara A.
    [J]. ANNALS OF STATISTICS, 2008, 36 (02): : 614 - 645
  • [6] Convergence and sparsity of Lasso and group Lasso in high-dimensional generalized linear models
    Wang, Lichun
    You, Yuan
    Lian, Heng
    [J]. STATISTICAL PAPERS, 2015, 56 (03) : 819 - 828
  • [7] Convergence and sparsity of Lasso and group Lasso in high-dimensional generalized linear models
    Lichun Wang
    Yuan You
    Heng Lian
    [J]. Statistical Papers, 2015, 56 : 819 - 828
  • [8] Debiased lasso for generalized linear models with a diverging number of covariates
    Xia, Lu
    Nan, Bin
    Li, Yi
    [J]. BIOMETRICS, 2023, 79 (01) : 344 - 357
  • [9] Adaptive Lasso for generalized linear models with a diverging number of parameters
    Cui, Yan
    Chen, Xia
    Yan, Li
    [J]. COMMUNICATIONS IN STATISTICS-THEORY AND METHODS, 2017, 46 (23) : 11826 - 11842
  • [10] Adaptive Lasso estimators for ultrahigh dimensional generalized linear models
    Wang, Mingqiu
    Wang, Xiuli
    [J]. STATISTICS & PROBABILITY LETTERS, 2014, 89 : 41 - 50