These workshop notes, written in 2008, cover statistical methods available in public domain software.
The workshop uses the statistical package ‘R’ and is based on ‘spatstat’, an add-on library for ‘R’ for the analysis of spatial data.
Topics covered include:
statistical formulation and methodological issues data input and handling R concepts such as classes and methods nonparametric intensity estimates goodness-of-fit testing for Complete Spatial Randomness maximum likelihood inference for Poisson processes model validation for Poisson processes distance methods and summary functions such as Ripley’s K function non-Poisson point process models simulation techniques fitting models using summary statistics Gibbs point process models fitting, simulating and validating Gibbs models multitype and marked point patterns exploratory analysis of marked point patterns multitype Poisson process models and maximum likelihood inference multitype Gibbs process models and maximum pseudolikelihood line segment data.
This workshop requires ‘R’ version 2.6.0 or later, and ‘spatstat’ version 1.14-5 or later.
Contact Prof. Adrian Baddeley for further information.


