Sequential, Bayesian geostatistics:: A principled method for large data sets

被引:15
作者
Cornford, D
Csató, L
Opper, M
机构
[1] Aston Univ, Neural Comp Res Grp, Birmingham B4 7ET, W Midlands, England
[2] Max Planck Inst Biol Cybernet, Lehel Csato, Empir Inference Machine Learning & Percept Grp, Tubingen, Germany
[3] Univ Southampton, Sch Elect & Comp Sci, Southampton, Hants, England
关键词
D O I
10.1111/j.1538-4632.2005.00635.x
中图分类号
P9 [自然地理学]; K9 [地理];
学科分类号
0705 ; 070501 ;
摘要
The principled statistical application of Gaussian random field models used in geostatistics has historically been limited to data sets of a small size. This limitation is imposed by the requirement to store and invert the covariance matrix of all the samples to obtain a predictive distribution at unsampled locations, or to use likelihood-based covariance, estimation. Various ad hoc approaches to solve this problem have been adopted, such as selecting a neighborhood region and/or a small number of observations to use in the kriging process, but these have no sound theoretical basis and it is unclear what information is being lost. In this article, we present a Bayesian method for estimating the posterior mean and covariance structures of a Gaussian random field using a sequential estimation algorithm. By imposing sparsity in a well-defined framework, the algorithm retains a subset of "basis vectors" that best represent the "true" posterior Gaussian random field model in the relative entropy sense. This allows a principled treatment of Gaussian random field models on very large data sets. The method is particularly appropriate when the Gaussian random field model is regarded as a latent variable model, which may be nonlinearly related to the observations. We show the application of the sequential, sparse Bayesian estimation in Gaussian random field models and discuss its merits and drawbacks.
引用
收藏
页码:183 / 199
页数:17
相关论文
共 19 条
  • [1] [Anonymous], BAYESIAN STAT
  • [2] Population Monte Carlo
    Cappé, O
    Guillin, A
    Marin, JM
    Robert, CP
    [J]. JOURNAL OF COMPUTATIONAL AND GRAPHICAL STATISTICS, 2004, 13 (04) : 907 - 929
  • [3] CORNFORD D, 2004, J ROYAL STAT SOC B, V66, P1
  • [4] Markov chain Monte Carlo convergence diagnostics: A comparative review
    Cowles, MK
    Carlin, BP
    [J]. JOURNAL OF THE AMERICAN STATISTICAL ASSOCIATION, 1996, 91 (434) : 883 - 904
  • [5] Cressie N, 1993, STAT SPATIAL DATA
  • [6] Sparse on-line Gaussian processes
    Csató, L
    Opper, M
    [J]. NEURAL COMPUTATION, 2002, 14 (03) : 641 - 668
  • [7] Csato L., 2002, THESIS ASTON U
  • [8] Model-based geostatistics
    Diggle, PJ
    Tawn, JA
    Moyeed, RA
    [J]. JOURNAL OF THE ROYAL STATISTICAL SOCIETY SERIES C-APPLIED STATISTICS, 1998, 47 : 299 - 326
  • [9] Flannery B.P., 1992, NUMERICAL RECIPES C
  • [10] Gilks W., 1995, Markov Chain Monte Carlo in Practice, DOI 10.1201/b14835