Constructor of the ets("A","N","N")
object for Bayesian estimation in Stan.
LocalLevel(ts,xreg = NULL,genT = FALSE,series.name = NULL)
a numeric or ts object with the univariate time series.
Optionally, a numerical matrix of external regressors, which must have the same number of rows as ts. It should not be a data frame.
a boolean value to specify for a generalized t-student SSM model.
an optional string vector with the time series names.
The function returns a list with the data for running stan()
function of
rstan package.
The function returns a list with the data for running stan()
function of
rstan package.
By default the ssm()
function generates a local level model (or a ets("A","N","N") or
exponential smoothing model from the forecast package). If trend
is set TRUE
,
then a local trend ssm model is defined (a equivalent ets("A","A","N") or Holt model from the
forecast package). For damped trend models set damped
to TRUE
. If seasonal
is set to TRUE
a seasonal local level model is defined (a equivalent ets("A","N","A") model
from the forecast package). For a Holt-Winters method (ets("A","A","A")) set Trend
and
seasonal
to TRUE
.
When genT
option is TRUE
a t-student innovations ssm model (see Ardia (2010)) is generated
see Fonseca, et. al (2019) for more details.
The default priors used in a ssm( ) model are:
level ~ normal(0,0.5)
sigma0 ~ t-student(0,1,7)
level1 ~ normal(0,1)
dfv ~ gamma(2,0.1)
breg ~ t-student(0,2.5,6)
For changing the default prior use the function set_prior()
.
Fonseca, T. and Cequeira, V. and Migon, H. and Torres, C. (2019). The effects of
degrees of freedom estimation in the Asymmetric GARCH model with Student-t
Innovations. arXiv doi: arXiv: 1910.01398
.
# NOT RUN {
mod1 = LocalLevel(ipc)
# }
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