Returns forecasts using Taylor's (2003) Double-Seasonal Holt-Winters method.
dshw(
y,
period1 = NULL,
period2 = NULL,
h = 2 * max(period1, period2),
alpha = NULL,
beta = NULL,
gamma = NULL,
omega = NULL,
phi = NULL,
lambda = NULL,
biasadj = FALSE,
armethod = TRUE,
model = NULL
)
An object of class "forecast
" which is a list that includes the
following elements:
A list containing information about the fitted model
The name of the forecasting method as a character string
Point forecasts as a time series
The original time series.
Residuals from the fitted model. That is x minus fitted values.
Fitted values (one-step forecasts)
The function summary
is used to obtain and print a summary of the
results, while the function plot
produces a plot of the forecasts.
The generic accessor functions fitted.values
and residuals
extract useful features of the value returned by dshw
.
Either an msts
object with two seasonal periods or a
numeric vector.
Period of the shorter seasonal period. Only used if y
is not an msts
object.
Period of the longer seasonal period. Only used if y
is not an msts
object.
Number of periods for forecasting.
Smoothing parameter for the level. If NULL
, the
parameter is estimated using least squares.
Smoothing parameter for the slope. If NULL
, the parameter
is estimated using least squares.
Smoothing parameter for the first seasonal period. If
NULL
, the parameter is estimated using least squares.
Smoothing parameter for the second seasonal period. If
NULL
, the parameter is estimated using least squares.
Autoregressive parameter. If NULL
, the parameter is
estimated using least squares.
Box-Cox transformation parameter. If lambda="auto"
,
then a transformation is automatically selected using BoxCox.lambda
.
The transformation is ignored if NULL. Otherwise,
data transformed before model is estimated.
Use adjusted back-transformed mean for Box-Cox transformations. If transformed data is used to produce forecasts and fitted values, a regular back transformation will result in median forecasts. If biasadj is TRUE, an adjustment will be made to produce mean forecasts and fitted values.
If TRUE, the forecasts are adjusted using an AR(1) model for the errors.
If it's specified, an existing model is applied to a new data set.
Rob J Hyndman
Taylor's (2003) double-seasonal Holt-Winters method uses additive trend and
multiplicative seasonality, where there are two seasonal components which
are multiplied together. For example, with a series of half-hourly data, one
would set period1=48
for the daily period and period2=336
for
the weekly period. The smoothing parameter notation used here is different
from that in Taylor (2003); instead it matches that used in Hyndman et al
(2008) and that used for the ets
function.
Taylor, J.W. (2003) Short-term electricity demand forecasting using double seasonal exponential smoothing. Journal of the Operational Research Society, 54, 799-805.
Hyndman, R.J., Koehler, A.B., Ord, J.K., and Snyder, R.D. (2008) Forecasting with exponential smoothing: the state space approach, Springer-Verlag. http://www.exponentialsmoothing.net.
HoltWinters
, ets
.
if (FALSE) {
fcast <- dshw(taylor)
plot(fcast)
t <- seq(0,5,by=1/20)
x <- exp(sin(2*pi*t) + cos(2*pi*t*4) + rnorm(length(t),0,.1))
fit <- dshw(x,20,5)
plot(fit)
}
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