I consider the use of Markov random fields (MRFs) on a fine grid to represent latent spatial processes when modeling point-level and areal data, including situations with spatial mis-alignment. Point observations are related to the grid cell in which they reside, while areal observations are related to the (approximate) integral over the latent process within the area of interest. I review several approaches to specifying the neighborhood structure for constructing the MRF precision matrix, presenting results comparing these MRF representations analyti-cally, in simulations, and in two examples. The results provide practical guidance for choosing a spatial process representation and highlight the importance of this choice. In particular, th...
Gaussian Markov Random Field (GMRF) models are most widely used in spatial statistics - a very activ...
Summarization: This book provides an inter-disciplinary introduction to the theory of random fields ...
The simulation of random spatial data on a computer is an important tool for understanding the behav...
In the analysis of spatial phenomena closely related to the local context, the probabilistic model ...
This thesis deals with how computationally effective lattice models could be used for inference of d...
Discretization of a geographical region is quite common in spatial analysis. There have been few stu...
Markov random fields (MRFs) are used to perform spatial (or spatiotemporal) regularization by imposi...
Discretization of a geographical region is quite common in spatial analysis. There have been few stu...
One of the basic assumptions in spatial statistic is second-order stationarity, which implies homoge...
Discretization of a geographical region is quite common in spatial analysis. There have been few stu...
Spatial datasets are common in the environmental sciences. In this study we suggest a hierarchical m...
Markov random fields (MRF) are popular in image processing applications to describe spatial dependen...
Conditional autoregressive (CAR) models, and the more general Markov random field models, are excell...
Markov random fields are typically used as priors in Bayesian image restoration methods to represent...
We propose a class of misaligned data models for addressing typical small area estimation (SAE) prob...
Gaussian Markov Random Field (GMRF) models are most widely used in spatial statistics - a very activ...
Summarization: This book provides an inter-disciplinary introduction to the theory of random fields ...
The simulation of random spatial data on a computer is an important tool for understanding the behav...
In the analysis of spatial phenomena closely related to the local context, the probabilistic model ...
This thesis deals with how computationally effective lattice models could be used for inference of d...
Discretization of a geographical region is quite common in spatial analysis. There have been few stu...
Markov random fields (MRFs) are used to perform spatial (or spatiotemporal) regularization by imposi...
Discretization of a geographical region is quite common in spatial analysis. There have been few stu...
One of the basic assumptions in spatial statistic is second-order stationarity, which implies homoge...
Discretization of a geographical region is quite common in spatial analysis. There have been few stu...
Spatial datasets are common in the environmental sciences. In this study we suggest a hierarchical m...
Markov random fields (MRF) are popular in image processing applications to describe spatial dependen...
Conditional autoregressive (CAR) models, and the more general Markov random field models, are excell...
Markov random fields are typically used as priors in Bayesian image restoration methods to represent...
We propose a class of misaligned data models for addressing typical small area estimation (SAE) prob...
Gaussian Markov Random Field (GMRF) models are most widely used in spatial statistics - a very activ...
Summarization: This book provides an inter-disciplinary introduction to the theory of random fields ...
The simulation of random spatial data on a computer is an important tool for understanding the behav...