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AStA Advances in Statistical Analysis

SCIE-ISI SCOPUS (2008-2023)

  1863-818X

  1863-8171

 

Cơ quản chủ quản:  Springer Verlag , SPRINGER

Lĩnh vực:
Statistics and ProbabilitySocial Sciences (miscellaneous)Applied MathematicsAnalysisModeling and SimulationEconomics and Econometrics

Các bài báo tiêu biểu

Spatio-temporal modeling of particulate matter concentration through the SPDE approach
Tập 97 - Trang 109-131 - 2012
Michela Cameletti, Finn Lindgren, Daniel Simpson, Håvard Rue
In this work, we consider a hierarchical spatio-temporal model for particulate matter (PM) concentration in the North-Italian region Piemonte. The model involves a Gaussian Field (GF), affected by a measurement error, and a state process characterized by a first order autoregressive dynamic model and spatially correlated innovations. This kind of model is well discussed and widely used in the air quality literature thanks to its flexibility in modelling the effect of relevant covariates (i.e. meteorological and geographical variables) as well as time and space dependence. However, Bayesian inference—through Markov chain Monte Carlo (MCMC) techniques—can be a challenge due to convergence problems and heavy computational loads. In particular, the computational issue refers to the infeasibility of linear algebra operations involving the big dense covariance matrices which occur when large spatio-temporal datasets are present. The main goal of this work is to present an effective estimating and spatial prediction strategy for the considered spatio-temporal model. This proposal consists in representing a GF with Matérn covariance function as a Gaussian Markov Random Field (GMRF) through the Stochastic Partial Differential Equations (SPDE) approach. The main advantage of moving from a GF to a GMRF stems from the good computational properties that the latter enjoys. In fact, GMRFs are defined by sparse matrices that allow for computationally effective numerical methods. Moreover, when dealing with Bayesian inference for GMRFs, it is possible to adopt the Integrated Nested Laplace Approximation (INLA) algorithm as an alternative to MCMC methods giving rise to additional computational advantages. The implementation of the SPDE approach through the R-library INLA ( www.r-inla.org ) is illustrated with reference to the Piemonte PM data. In particular, providing the step-by-step R-code, we show how it is easy to get prediction and probability of exceedance maps in a reasonable computing time.
Computer experiments: a review
Tập 94 Số 4 - Trang 311-324 - 2010
Sigal Levy, David M. Steinberg
Efficient estimation of Markov regime-switching models: An application to electricity spot prices
Tập 96 Số 3 - Trang 385-407 - 2012
Joanna Janczura, Rafał Weron
Latin hypercube sampling with inequality constraints
- 2010
Matthieu Petelet, Bertrand Iooss, Olivier Asserin, Alexandre Loredo
A new heteroskedasticity-consistent covariance matrix estimator for the linear regression model
- 2011
Francisco Cribari–Neto, Wilton Bernardino da Silva
Discrete dispersion models and their Tweedie asymptotics
- 2016
Bent Jørgensen, Célestin C. Kokonendji
True integer value time series
Tập 94 Số 3 - Trang 217-229 - 2010
R. Keith Freeland
First-order random coefficients integer-valued threshold autoregressive processes
- 2018
Han Li, Kai Yang, Shuhong Zhao, Dehui Wang
Estimating the change in soccer’s home advantage during the Covid-19 pandemic using bivariate Poisson regression
Tập 107 Số 1-2 - Trang 205-232 - 2023
Luke Benz, Michael J. Lopez
Design and analysis of computer experiments
Tập 94 Số 4 - Trang 307-309 - 2010
Sonja Kuhnt, David M. Steinberg