Spatial, temporal, and spatio-temporal point processes, and in particular Poisson processes, are stochastic processes that are largely used to describe and model the distribution of a wealth of real phenomena. When a model is fitted to a set of random points, observed in a given multidimensional space, diagnostic measures are necessary to assess the goodness-of-fit and to evaluate the ability of that model to describe the random point pattern behaviour. The main problem when dealing with residual analysis for point processes is to find a correct definition of residuals. Diagnostics of goodness-of-fit in the theory of point processes are often considered through the transformation of data into residuals as a result of a thinning or a rescal...
In this thesis we examine estimation of the K-function which is an important second-order characteri...
Second-order characteristics are used to analyse the spatio-temporal structure of the under- lying ...
For any point process in Rd that has a Papangelou conditional intensity λ, we define a random measur...
Spatial, temporal, and spatio-temporal point processes, and in particular Poisson processes, are sto...
Diagnostics of goodness-of-fit in the theory of point processes are often considered through the tra...
Diagnostics of goodness-of-fit in the theory of point processes are often considered through the tra...
We define residuals for point process models fitted to spatial point pattern data, and propose diagn...
The paper gives first-order residual analysis for spatiotemporal point processes that is similar to ...
A new approach for point process diagnostics is presented. The method is based on extending second-...
A new approach for point process diagnostics is presented. The method is based on extending second-o...
We define residuals for point process models fitted to spatial point pattern data, and we propose di...
Methods for the statistical analysis of stationary spatial point process data are now well establish...
A new diagnostic method for point processes is here presented. It is based on their second-order ana...
A new diagnostic method for point processes is here presented. It is based on their second-order ana...
A new diagnostic method for point processes is here presented. It is based on their second-order ana...
In this thesis we examine estimation of the K-function which is an important second-order characteri...
Second-order characteristics are used to analyse the spatio-temporal structure of the under- lying ...
For any point process in Rd that has a Papangelou conditional intensity λ, we define a random measur...
Spatial, temporal, and spatio-temporal point processes, and in particular Poisson processes, are sto...
Diagnostics of goodness-of-fit in the theory of point processes are often considered through the tra...
Diagnostics of goodness-of-fit in the theory of point processes are often considered through the tra...
We define residuals for point process models fitted to spatial point pattern data, and propose diagn...
The paper gives first-order residual analysis for spatiotemporal point processes that is similar to ...
A new approach for point process diagnostics is presented. The method is based on extending second-...
A new approach for point process diagnostics is presented. The method is based on extending second-o...
We define residuals for point process models fitted to spatial point pattern data, and we propose di...
Methods for the statistical analysis of stationary spatial point process data are now well establish...
A new diagnostic method for point processes is here presented. It is based on their second-order ana...
A new diagnostic method for point processes is here presented. It is based on their second-order ana...
A new diagnostic method for point processes is here presented. It is based on their second-order ana...
In this thesis we examine estimation of the K-function which is an important second-order characteri...
Second-order characteristics are used to analyse the spatio-temporal structure of the under- lying ...
For any point process in Rd that has a Papangelou conditional intensity λ, we define a random measur...