Residual likelihood analysis for spatial mixed linear models /

Saved in:
Bibliographic Details
Author / Creator:Dutta, Somak, author.
Imprint:2015.
Ann Arbor : ProQuest Dissertations & Theses, 2015
Description:1 electronic resource (137 pages)
Language:English
Format: E-Resource Dissertations
Local Note:School code: 0330
URL for this record:http://pi.lib.uchicago.edu/1001/cat/bib/10773316
Hidden Bibliographic Details
Other authors / contributors:University of Chicago. degree granting institution.
ISBN:9781339097671
Notes:Advisors: Debashis Mondal Committee members: Mihai Anitescu; Peter McCullagh; Michael L. Stein.
Dissertation Abstracts International, Volume: 77-02(E), Section: B.
English
Summary:In this thesis, we present a new matrix-free residual maximum likelihood (REML) analysis for spatial mixed linear models where spatial observations usually represent average values over non-null regions. The REML analysis is obtained after embedding the sampling locations in a fine scale rectangular lattice, treating unobserved sites as missing data. The spatial random fields considered here are the intrinsic autoregression processes or are based on fractional Laplacian differencing on the lattice. Here, using the h-likelihood method, we derive REML estimating equations that allow for singular precision matrices, estimation of covariate effects, prediction of unobserved spatial effects and REML estimation of precision parameters as a solution to explicit gamma regression models.
Furthermore, we devise a sophisticated computational algorithm that enables us to achieve fast matrix-free statistical computations. In particular, these matrix-free computations include the use of (1) the two-dimensional discrete cosine transformation that arises in the spectral decomposition of the precision matrix of our spatial random fields and that allows fast matrix-free matrix-vector multiplication, (2) a matrix-free preconditioned Lanczos algorithm that solves non-sparse matrix equations with linear constraints, (3) a matrix-free Hutchinson's trace estimator that stochastically approximates the trace of a matrix, and (4) a robust trust region method that always finds a local maximum of the non-concave residual log-likelihood function. Keeping various inferential problems in mind, we exploit these computational algorithms to develop a matrix-free method of conditional simulation and also obtain precise stochastic approximations to the log likelihood functions.
We provide extensive applications on agriculture variety trials, precision agriculture trials on large arrays and mapping ground water arsenic concentration in Bangladesh. These applications bring forward various new aspects of spatial modeling on regular lattice such as numeric consistency of results and robustness of statistical inference to changes of lattice spacing.

MARC

LEADER 00000ntm a22000003i 4500
001 10773316
005 20230629180954.7
007 cr un|---|||||
008 151222s2015 miu||||||m |||| ||eng d
003 ICU
020 |a 9781339097671 
035 |a (MiAaPQD)AAI3725464 
040 |a MiAaPQD  |b eng  |c MiAaPQD  |e rda 
100 1 |a Dutta, Somak,  |e author. 
245 1 0 |a Residual likelihood analysis for spatial mixed linear models /  |c Dutta, Somak. 
260 |c 2015. 
264 1 |a Ann Arbor :  |b ProQuest Dissertations & Theses,  |c 2015 
300 |a 1 electronic resource (137 pages) 
336 |a text  |b txt  |2 rdacontent 
337 |a computer  |b c  |2 rdamedia 
338 |a online resource  |b cr  |2 rdacarrier 
500 |a Advisors: Debashis Mondal Committee members: Mihai Anitescu; Peter McCullagh; Michael L. Stein. 
502 |b Ph.D.  |c The University of Chicago, Division of the Physical Sciences, Department of Statistics  |d 2015. 
510 4 |a Dissertation Abstracts International,  |c Volume: 77-02(E), Section: B. 
520 |a In this thesis, we present a new matrix-free residual maximum likelihood (REML) analysis for spatial mixed linear models where spatial observations usually represent average values over non-null regions. The REML analysis is obtained after embedding the sampling locations in a fine scale rectangular lattice, treating unobserved sites as missing data. The spatial random fields considered here are the intrinsic autoregression processes or are based on fractional Laplacian differencing on the lattice. Here, using the h-likelihood method, we derive REML estimating equations that allow for singular precision matrices, estimation of covariate effects, prediction of unobserved spatial effects and REML estimation of precision parameters as a solution to explicit gamma regression models. 
520 |a Furthermore, we devise a sophisticated computational algorithm that enables us to achieve fast matrix-free statistical computations. In particular, these matrix-free computations include the use of (1) the two-dimensional discrete cosine transformation that arises in the spectral decomposition of the precision matrix of our spatial random fields and that allows fast matrix-free matrix-vector multiplication, (2) a matrix-free preconditioned Lanczos algorithm that solves non-sparse matrix equations with linear constraints, (3) a matrix-free Hutchinson's trace estimator that stochastically approximates the trace of a matrix, and (4) a robust trust region method that always finds a local maximum of the non-concave residual log-likelihood function. Keeping various inferential problems in mind, we exploit these computational algorithms to develop a matrix-free method of conditional simulation and also obtain precise stochastic approximations to the log likelihood functions. 
520 |a We provide extensive applications on agriculture variety trials, precision agriculture trials on large arrays and mapping ground water arsenic concentration in Bangladesh. These applications bring forward various new aspects of spatial modeling on regular lattice such as numeric consistency of results and robustness of statistical inference to changes of lattice spacing. 
546 |a English 
590 |a School code: 0330 
690 |a Statistics. 
710 2 |a University of Chicago.  |e degree granting institution. 
720 1 |a Debashis Mondal  |e degree supervisor. 
856 4 0 |u http://gateway.proquest.com/openurl?url_ver=Z39.88-2004&rft_val_fmt=info:ofi/fmt:kev:mtx:dissertation&res_dat=xri:pqm&rft_dat=xri:pqdiss:3725464  |y ProQuest 
035 |a AAI3725464 
929 |a eresource 
999 f f |i c8797ee2-7f28-5490-bfe0-de00e7163695  |s 6dff6b36-1181-56a5-a04e-a74bfca8619e 
928 |t Library of Congress classification  |l Online  |c UC-FullText  |u http://gateway.proquest.com/openurl?url_ver=Z39.88-2004&rft_val_fmt=info:ofi/fmt:kev:mtx:dissertation&res_dat=xri:pqm&rft_dat=xri:pqdiss:3725464  |z ProQuest  |i 9079543