An ARFIMA(p,d,q) model is selected and estimated automatically using the Hyndman-Khandakar (2008) algorithm to select p and q and the Haslett and Raftery (1989) algorithm to estimate the parameters including d.
arfima(y, drange = c(0, 0.5), estim = c("mle", "ls"), model = NULL,
lambda = NULL, biasadj = FALSE, x = y, ...)
a univariate time series (numeric vector).
Allowable values of d to be considered. Default of
c(0,0.5)
ensures a stationary model is returned.
If estim=="ls"
, then the ARMA parameters are calculated
using the Haslett-Raftery algorithm. If estim=="mle"
, then the ARMA
parameters are calculated using full MLE via the arima
function.
Output from a previous call to arfima
. If model is
passed, this same model is fitted to y without re-estimating any parameters.
Box-Cox transformation parameter. Ignored if NULL
.
Otherwise, data transformed before model is estimated.
Use adjusted back-transformed mean for Box-Cox
transformations. If TRUE
, point forecasts and fitted values are mean
forecast. Otherwise, these points can be considered the median of the
forecast densities.
Deprecated. Included for backwards compatibility.
Other arguments passed to auto.arima
when
selecting p and q.
A list object of S3 class "fracdiff"
, which is described in
the fracdiff
documentation. A few additional objects
are added to the list including x
(the original time series), and the
residuals
and fitted
values.
This function combines fracdiff
and
auto.arima
to automatically select and estimate an ARFIMA
model. The fractional differencing parameter is chosen first assuming an
ARFIMA(2,d,0) model. Then the data are fractionally differenced using the
estimated d and an ARMA model is selected for the resulting time series
using auto.arima
. Finally, the full ARFIMA(p,d,q) model is
re-estimated using fracdiff
. If estim=="mle"
,
the ARMA coefficients are refined using arima
.
J. Haslett and A. E. Raftery (1989) Space-time Modelling with Long-memory Dependence: Assessing Ireland's Wind Power Resource (with discussion); Applied Statistics 38, 1-50.
Hyndman, R.J. and Khandakar, Y. (2008) "Automatic time series forecasting: The forecast package for R", Journal of Statistical Software, 26(3).
# NOT RUN {
library(fracdiff)
x <- fracdiff.sim( 100, ma=-.4, d=.3)$series
fit <- arfima(x)
tsdisplay(residuals(fit))
# }
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