Calibrated prediction regions for Gaussian random fields

被引:0
作者
Lagazio, Corrado [1 ]
Vidoni, Paolo [2 ]
机构
[1] Univ Genoa, Dept Econ & Business Studies, Via Vivaldi 5, I-16126 Genoa, Italy
[2] Univ Udine, Dept Econ & Stat, Via Tomadini 30-A, I-33100 Udine, Italy
关键词
air quality; bootstrap calibration; coverage probability; estimative prediction region; highest prediction density region; spatial prediction; DISTRIBUTIONS; MODELS; LIMITS; GEOSTATISTICS; INTERVALS;
D O I
10.1002/env.2495
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
This paper proposes a method to construct well-calibrated frequentist prediction regions, with particular regard to the highest prediction density regions, which may be useful for multivariate spatial prediction. We consider, in particular, Gaussian random fields, and using a calibrating procedure we effectively improve the estimative prediction regions, because the coverage probability turns out to be closer to the target nominal value. Whenever a closed-form expression for the well-calibrated prediction region is not available, we may specify a simple bootstrap-based estimator. Particular attention is dedicated to the associated, improved predictive distribution function, which can be usefully considered for identifying spatial locations with extreme or unusual observations. A simulation study is proposed in order to compare empirically the calibrated predictive regions with the estimative ones. The proposed method is then applied to the global model assessment of a deterministic model for the prediction of PM10 levels using data from a network of air quality monitoring stations.
引用
收藏
页数:13
相关论文
共 50 条
  • [21] Point and block prediction in log-Gaussian random fields: The non-constant mean case
    Rui, Changxiang
    De Oliveira, Victor
    JOURNAL OF STATISTICAL PLANNING AND INFERENCE, 2008, 138 (07) : 2128 - 2142
  • [22] Composite Likelihood Inference for Multivariate Gaussian Random Fields
    Bevilacqua, Moreno
    Alegria, Alfredo
    Velandia, Daira
    Porcu, Emilio
    JOURNAL OF AGRICULTURAL BIOLOGICAL AND ENVIRONMENTAL STATISTICS, 2016, 21 (03) : 448 - 469
  • [23] Constructing Priors that Penalize the Complexity of Gaussian Random Fields
    Fuglstad, Geir-Arne
    Simpson, Daniel
    Lindgren, Finn
    Rue, Havard
    JOURNAL OF THE AMERICAN STATISTICAL ASSOCIATION, 2019, 114 (525) : 445 - 452
  • [24] Conditioning simulations of gaussian random fields by ordinary kriging
    Emery, Xavier
    MATHEMATICAL GEOLOGY, 2007, 39 (06): : 607 - 623
  • [25] Composite Likelihood Inference for Multivariate Gaussian Random Fields
    Moreno Bevilacqua
    Alfredo Alegria
    Daira Velandia
    Emilio Porcu
    Journal of Agricultural, Biological, and Environmental Statistics, 2016, 21 : 448 - 469
  • [26] Efficient prediction designs for random fields
    Mueller, Werner G.
    Pronzato, Luc
    Rendas, Joao
    Waldl, Helmut
    APPLIED STOCHASTIC MODELS IN BUSINESS AND INDUSTRY, 2015, 31 (02) : 178 - 194
  • [27] A New Construction of Covariance Functions for Gaussian Random Fields
    Wu, Weichao
    Micheas, Athanasios C.
    SANKHYA-SERIES A-MATHEMATICAL STATISTICS AND PROBABILITY, 2024, 86 (01): : 530 - 574
  • [28] Conditioning Simulations of Gaussian Random Fields by Ordinary Kriging
    Xavier Emery
    Mathematical Geology, 2007, 39 : 607 - 623
  • [29] On Gaussian Markov random fields and Bayesian disease mapping
    MacNab, Ying C.
    STATISTICAL METHODS IN MEDICAL RESEARCH, 2011, 20 (01) : 49 - 68
  • [30] A Bayesian Framework to Identify Random Parameter Fields Based on the Copula Theorem and Gaussian Fields: Application to Polycrystalline Materials
    Rappel, H.
    Wu, L.
    Noels, L.
    Beex, L. A. A.
    JOURNAL OF APPLIED MECHANICS-TRANSACTIONS OF THE ASME, 2019, 86 (12):