The fundamental data structure of the package is an S4 class
sts
wrapping observations, monitoring results and date handling
for multivariate time series. Currently the package contains
implementations typical outbreak detection procedures such as Stroup et
al. (1989), Farrington et al., (1996), Rossi et al. (1999), Rogerson
and Yamada (2001), a Bayesian approach (
Furthermore, inference methods for the retrospective infectious disease model in Held et al. (2005), Paul et al. (2008) ("algo.hhh") and Paul and Held (2011) ("hhh4") handling multivariate time series of counts. Furthermore, the fully Bayesian approach for univariate time series of counts from Held et al. (2006) ("twins") is also implemented Self-exciting spatio-temporal point processes are modeled through additive-multiplicative conditional intensities as described in H�hle (2009) ("twinSIR") and Meyer et al (2012) ("twinstim").
Altogether, the package contains several real-world datasets, the ability to simulate outbreak data, visualize the results of the monitoring in temporal, spatial or spatio-temporal fashion.
citation(package="surveillance")
.#Code from an early survey article about the package: Hoehle (2007)
#available from http://surveillance.r-forge.r-project.org/
demo(cost)
#Code from a more recent book chapter about using the package for the
#monitoring of Danish mortality data (Hoehle, 2009).
demo(biosurvbook)
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