On the Quantification of Model Uncertainty: A Bayesian Perspective

被引:19
|
作者
Kaplan, David [1 ]
机构
[1] Univ Wisconsin, Madison, WI 53706 USA
关键词
Bayesian model averaging; Bayesian stacking; prediction; CROSS-VALIDATION; GRAPHICAL MODELS; SCORING RULES; SELECTION; PRIORS; REGRESSION; INFORMATION; PERFORMANCE; CRITERION; STACKING;
D O I
10.1007/s11336-021-09754-5
中图分类号
O1 [数学];
学科分类号
0701 ; 070101 ;
摘要
Issues of model selection have dominated the theoretical and applied statistical literature for decades. Model selection methods such as ridge regression, the lasso, and the elastic net have replaced ad hoc methods such as stepwise regression as a means of model selection. In the end, however, these methods lead to a single final model that is often taken to be the model considered ahead of time, thus ignoring the uncertainty inherent in the search for a final model. One method that has enjoyed a long history of theoretical developments and substantive applications, and that accounts directly for uncertainty in model selection, is Bayesian model averaging (BMA). BMA addresses the problem of model selection by not selecting a final model, but rather by averaging over a space of possible models that could have generated the data. The purpose of this paper is to provide a detailed and up-to-date review of BMA with a focus on its foundations in Bayesian decision theory and Bayesian predictive modeling. We consider the selection of parameter and model priors as well as methods for evaluating predictions based on BMA. We also consider important assumptions regarding BMA and extensions of model averaging methods to address these assumptions, particularly the method of Bayesian stacking. Simple empirical examples are provided and directions for future research relevant to psychometrics are discussed.
引用
收藏
页码:215 / 238
页数:24
相关论文
共 50 条
  • [1] On the Quantification of Model Uncertainty: A Bayesian Perspective
    David Kaplan
    [J]. Psychometrika, 2021, 86 : 215 - 238
  • [2] A Bayesian approach for quantification of model uncertainty
    Park, Inseok
    Amarchinta, Hemanth K.
    Grandhi, Ramana V.
    [J]. RELIABILITY ENGINEERING & SYSTEM SAFETY, 2010, 95 (07) : 777 - 785
  • [3] Bayesian uncertainty quantification of local volatility model
    Kai Yin
    Anirban Mondal
    [J]. Sankhya B, 2023, 85 : 290 - 324
  • [4] Bayesian uncertainty quantification of local volatility model
    Yin, Kai
    Mondal, Anirban
    [J]. SANKHYA-SERIES B-APPLIED AND INTERDISCIPLINARY STATISTICS, 2023, 85 (SUPPL 1): : 290 - 324
  • [5] Sparsifying priors for Bayesian uncertainty quantification in model discovery
    Hirsh, Seth M.
    Barajas-Solano, David A.
    Kutz, J. Nathan
    [J]. ROYAL SOCIETY OPEN SCIENCE, 2022, 9 (02):
  • [6] An analytical perspective on Bayesian uncertainty quantification and propagation in mode shape assembly
    Yan, Wang-Ji
    Papadimitriou, Costas
    Katafygiotis, Lambros S.
    Chronopoulos, Dimitrios
    [J]. MECHANICAL SYSTEMS AND SIGNAL PROCESSING, 2020, 135
  • [7] Adaptive Model Refinement Approach for Bayesian Uncertainty Quantification in Turbulence Model
    Zeng, Fanzhi
    Zhang, Wei
    Li, Jinping
    Zhang, Tianxin
    Yan, Chao
    [J]. AIAA JOURNAL, 2022, 60 (06) : 3502 - 3516
  • [8] Uncertainty Quantification for Bayesian Optimization
    Tuo, Rui
    Wang, Wenjia
    [J]. INTERNATIONAL CONFERENCE ON ARTIFICIAL INTELLIGENCE AND STATISTICS, VOL 151, 2022, 151
  • [9] Uncertainty quantification in Bayesian inversion
    Stuart, Andrew M.
    [J]. PROCEEDINGS OF THE INTERNATIONAL CONGRESS OF MATHEMATICIANS (ICM 2014), VOL IV, 2014, : 1145 - 1162
  • [10] UNCERTAINTY QUANTIFICATION FOR BAYESIAN CART
    Castillo, Ismael
    Rockova, Veronika
    [J]. ANNALS OF STATISTICS, 2021, 49 (06): : 3482 - 3509