Point processes are the fundamental building blocks of stochastic geometry models. An important example is particle models that can be represented as marked point processes.
Modelling and statistical analysis of point processes in Euclidean spaces is very well developed. However, there is need for transferring this methodology to non-Euclidean spaces such as linear networks and directed graphs.
WP3.1: Point processes on linear networks
WP3.2: Point process models and inference for attributed directed graphs
WP3.3: Determinantal point process modelling
WP3.4: Sparse models for multivariate spatial point processes
WP3.5: Inference from quadrat count data
In the second funding period of CSGB, we want to transfer statistical methods for spatial and spatio-temporal point processes to non-Euclidean spaces.
In the second funding period of CSGB, we also take up the challenge of modelling multivariate spatial point processes. The problem is here the high dimensionality of the parameter space. Inference for quadrat count data with explanatory variables will be studied. The research on determinantal point processes will be continued.