In recent years, there has been a surge of research interest in the analysis of time series and spatial data. While on one hand more and more sophisticated models are being developed, on the other hand the resulting theory and estimation process has become more and more involved. This dissertation addresses the development of statistical inference procedures for data exhibiting dependencies of varied form and structure. In the first work, we consider estimation of the mean squared prediction error (MSPE) of the best linear predictor of (possibly) nonlinear functions of finitely many future observations in a stationary time series. We develop a resampling methodology for estimating the MSPE when the unknown parameters in the best linear pr...
Stationary Random Functions have been sucessfully applied in geostatistical applications for decades...
In many areas of the agriculture, biological, physical and social sciences, spatial lattice data are...
Les fonctions aléatoires stationnaires ont été utilisées avec succès dans les applications géostatis...
In recent years, there has been a surge of research interest in the analysis of time series and spat...
Disregarding spatial dependence can invalidate methods for analyzingcross-sectional and panel data. ...
This dissertation develops nonparametric inference procedures for data exhibiting dependencies of va...
Nonparametric estimation of probability density functions, both marginal and joint densities, is a v...
Nonparametric regression with spatial, or spatio-temporal, data is considered. The conditional mean ...
This dissertation addresses the asymptotic theory behind parametric estimation inspatial regression ...
Efficient semiparametric and parametric estimates are developed for a spatial autoregressive model, ...
In recent years, the application of resampling methods to dependent data, such as time series or sp...
We develop non-nested tests in a general spatial, spatio-temporal or panel data context. The spatial...
Nonparametric spectral density estimates find many uses in econometrics. For stationary random field...
Thesis (Ph.D.)--Massachusetts Institute of Technology, Dept. of Mathematics, 2000.Includes bibliogra...
The typical assumption made in regression analysis with cross-sectional data is that of independent...
Stationary Random Functions have been sucessfully applied in geostatistical applications for decades...
In many areas of the agriculture, biological, physical and social sciences, spatial lattice data are...
Les fonctions aléatoires stationnaires ont été utilisées avec succès dans les applications géostatis...
In recent years, there has been a surge of research interest in the analysis of time series and spat...
Disregarding spatial dependence can invalidate methods for analyzingcross-sectional and panel data. ...
This dissertation develops nonparametric inference procedures for data exhibiting dependencies of va...
Nonparametric estimation of probability density functions, both marginal and joint densities, is a v...
Nonparametric regression with spatial, or spatio-temporal, data is considered. The conditional mean ...
This dissertation addresses the asymptotic theory behind parametric estimation inspatial regression ...
Efficient semiparametric and parametric estimates are developed for a spatial autoregressive model, ...
In recent years, the application of resampling methods to dependent data, such as time series or sp...
We develop non-nested tests in a general spatial, spatio-temporal or panel data context. The spatial...
Nonparametric spectral density estimates find many uses in econometrics. For stationary random field...
Thesis (Ph.D.)--Massachusetts Institute of Technology, Dept. of Mathematics, 2000.Includes bibliogra...
The typical assumption made in regression analysis with cross-sectional data is that of independent...
Stationary Random Functions have been sucessfully applied in geostatistical applications for decades...
In many areas of the agriculture, biological, physical and social sciences, spatial lattice data are...
Les fonctions aléatoires stationnaires ont été utilisées avec succès dans les applications géostatis...