For inferential analysis of spatial data, probability modelling in the form of a spatial stochastic process is often adopted. In the univariate case, a realization of the process is a surface over the region of interest. The specification of the process has implications for the smoothness of process realizations and the existence of directional derivatives. In the context of stationary processes, the work of Kent (Ann. Probab. 17 (1989) 1432) pursues the notion of a.s. continuity while the work of Stein (Interpolation of Spatial Data; Some Theory for Kriging, Springer, New York, 1999) follows the path of mean square continuity (and, more generally, mean square differentiability). Our contribution is to clarify and extend these ideas in vari...
Models for the analysis of multivariate spatial data are receiving increased attention these days. I...
We define residuals for point process models fitted to spatial point pattern data, and propose diagn...
Many models for the study of point-referenced data explicitly introduce spatial random effects to ca...
A natural extrapolation of stochastic operations (continuity and differentiation) already described ...
The emergence of dense spatial data sets allows us to examine spatial processes on a local level. Th...
The differentiability of a random field has a direct relationship with the differentiability of its ...
The statistical modelling of spatial data plays an important role in the geological and environmenta...
Spatial process models popular in geostatistics often represent the observed data as the sum of a sm...
The theory of stochastic processes indexed by a partially ordered set has been the subject of much r...
We summarize and discuss the current state of spatial point process theory and directions for future...
The purpose of this thesis is to explore, apply and develop statistical tools in the area which has ...
For any point process in Rd that has a Papangelou conditional intensity λ, we define a random measur...
Geostatistical analysis of soil properties is undertaken to allow prediction of values of these prop...
The covariances in spatial models are estimated by linear smoothing of products of residuals. In the...
The simulation of random spatial data on a computer is an important tool for understanding the behav...
Models for the analysis of multivariate spatial data are receiving increased attention these days. I...
We define residuals for point process models fitted to spatial point pattern data, and propose diagn...
Many models for the study of point-referenced data explicitly introduce spatial random effects to ca...
A natural extrapolation of stochastic operations (continuity and differentiation) already described ...
The emergence of dense spatial data sets allows us to examine spatial processes on a local level. Th...
The differentiability of a random field has a direct relationship with the differentiability of its ...
The statistical modelling of spatial data plays an important role in the geological and environmenta...
Spatial process models popular in geostatistics often represent the observed data as the sum of a sm...
The theory of stochastic processes indexed by a partially ordered set has been the subject of much r...
We summarize and discuss the current state of spatial point process theory and directions for future...
The purpose of this thesis is to explore, apply and develop statistical tools in the area which has ...
For any point process in Rd that has a Papangelou conditional intensity λ, we define a random measur...
Geostatistical analysis of soil properties is undertaken to allow prediction of values of these prop...
The covariances in spatial models are estimated by linear smoothing of products of residuals. In the...
The simulation of random spatial data on a computer is an important tool for understanding the behav...
Models for the analysis of multivariate spatial data are receiving increased attention these days. I...
We define residuals for point process models fitted to spatial point pattern data, and propose diagn...
Many models for the study of point-referenced data explicitly introduce spatial random effects to ca...