Global envelope tests for spatial processes
Abstract
Envelope tests are a popular tool in spatial statistics, where they are used in goodness-of-fit testing. These tests graphically compare an empirical function with its simulated counterparts from the null model. However, the type I error probability is conventionally controlled for a fixed distance only, whereas the functions are inspected on an interval of distances . In this study, we propose two approaches related to Barnard's Monte Carlo test for building global envelope tests on :(1) ordering the empirical and simulated functions based on their -wise ranks among each other, and (2) the construction of envelopes for a deviation test. These new tests allow the a priori selection of the global and they yield -values. We illustrate these tests using simulated and real point pattern data.
Cite
@article{arxiv.1307.0239,
title = {Global envelope tests for spatial processes},
author = {Mari Myllymäki and Tomás Mrkvicka and Pavel Grabarnik and Henri Seijo and Ute Hahn},
journal= {arXiv preprint arXiv:1307.0239},
year = {2017}
}