The atsar R package implements Bayesian time series models using Stan, primarily for illustrative purposes and teaching (University of Washington’s Fish 507, Winter quarters). The Stan webpage, and appropriate citation guidelines are here.
install.packages('atsar', repos = c('https://atsa-es.r-universe.dev', 'https://cloud.r-project.org'))
You can build the development version of the package from the source here. Note you need to use this if you have a M1/M2 Mac.
# install.packages("remotes")
remotes::install_github("nwfsc-timeseries/atsar")
Simulate data:
library(rstan)
#> Warning: package 'rstan' was built under R version 4.3.2
#> Loading required package: StanHeaders
#> Warning: package 'StanHeaders' was built under R version 4.3.2
#>
#> rstan version 2.32.6 (Stan version 2.32.2)
#> For execution on a local, multicore CPU with excess RAM we recommend calling
#> options(mc.cores = parallel::detectCores()).
#> To avoid recompilation of unchanged Stan programs, we recommend calling
#> rstan_options(auto_write = TRUE)
#> For within-chain threading using `reduce_sum()` or `map_rect()` Stan functions,
#> change `threads_per_chain` option:
#> rstan_options(threads_per_chain = 1)
library(atsar)
set.seed(123)
s = cumsum(rnorm(50))
plot(s)
Fit several models to this data:
# Regression, no slope
regression_model = fit_stan(y = s, x = model.matrix(lm(s~1)), model_name="regression")
# Regression, with slope
regression_model = fit_stan(y = s, x = model.matrix(lm(s~seq(1,length(s)))), model_name="regression")
# AR(1) time series model
ar1_model = fit_stan(y = s, est_drift=FALSE, P = 1, model_name = "ar")
# ARMA(1,1) time series model
arma1_model = fit_stan(y = s, model_name = "arma11")
# univariate ss model -- without drift but mean reversion estimated
ss_model = fit_stan(y = s, model_name = "ss_ar", est_drift=FALSE)
To see the Stan mode code behind each of these, look in the inst/stan
folder on the GitHub repository. Note that fit_stan.R
does some data
preparation to deal with Stan not accepting NAs in the data.
- ATSA lab book - Many applications are covered in our Applied Time Series Analysis book developed from the labs in our course.
- ATSA course website - We have lectures and all material from our course on our course website.
- Additional information can be found on the NWFSC time series page which includes several additional books and packages, NWFSC time series page
Ward, E.J., M.D. Scheuerell, and E.E. Holmes. 2018. ‘atsar’: Applied Time Series Analysis in R: an introduction to time series analysis for ecological and fisheries data with Stan.
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