stpp Documentation
Space-Time Point Pattern Simulation, Visualisation
and Analysis
Edith Gabriel, Peter J Diggle, Barry Rowlingson and
Francisco J Rodriguez-Cortes
2024-06-27
Many of the models encountered in applications of point process
methods to the study of spatio-temporal phenomena are covered in ‘stpp’.
This package provides statistical tools for analyzing the global and
local second-order properties of spatio-temporal point processes,
including estimators of the space-time inhomogeneous K-function and pair
correlation function among others. It also includes tools to get static
and dynamic display of spatio-temporal point patterns.
References
Baddeley,
A., Rubak, E., Turner, R. (2015). Spatial Point Patterns: Methodology
and Applications with R. CRC Press, Boca Raton.
Chan,
G. and Wood A. (1997). An algorithm for simulating stationary Gaussian
random fields. Applied Statistics, Algorithm Section,
46, 171–181.
Chan,
G. and Wood A. (1999). Simulation of stationary Gaussian vector fields.
Statistics and Computing, 9,
265–268.
Diggle
P. , Chedwynd A., Haggkvist R. and Morris S. (1995). Second-order
analysis of space-time clustering. Statistical Methods in Medical
Research, 4, 124–136.
Diggle,
P.J., 2013. Statistical Analysis of Spatial and Spatio-Temporal Point
Patterns. CRC Press, Boca Raton.
Gabriel
E., Rowlingson B., Diggle P. (2013). stpp: an R package for plotting,
simulating and analyzing Spatio-Temporal Point Patterns. Journal of
Statistical Software, 53(2), 1-29.
Gabriel
E., Diggle P. (2009). Second-order analysis of inhomogeneous
spatio-temporal point process data. Statistica Neerlandica,
63, 43–51.
Gabriel
E. (2014). Estimating second-order characteristics of inhomogeneous
spatio-temporal point processes: influence ofedge correction methods and
intensity estimates. Methodology and computing in Applied
Probabillity, 16(2), 411–431.
Gneiting
T. (2002). Nonseparable, stationary covariance functions for space-time
data. Journal of the American Statistical Association,
97, 590–600.
Gonzalez,
J. A., Rodriguez-Cortes, F. J., Cronie, O. and Mateu, J. (2016).
Spatio-temporal point process statistics: a review. Spatial
Statiscts, 18, 505–544.
Siino,
M., Rodriguez-Cortes, F. J., Mateu, J. and Adelfio, G. (2017). Testing
for local structure in spatio-temporal point pattern data.
Environmetrics. DOI: 10.1002/env.2463.
Stoyan,
D., Rodriguez-Cortes, F. J., Mateu, J., and Gille, W. (2017). Mark
variograms for spatio-temporal point processes. Spatial
Statistics. 20, 125-147.