thetaf {forecast} | R Documentation |
Theta method forecast
Description
Returns forecasts and prediction intervals for a theta method forecast.
Usage
thetaf(
y,
h = ifelse(frequency(y) > 1, 2 * frequency(y), 10),
level = c(80, 95),
fan = FALSE,
x = y
)
Arguments
y |
a numeric vector or time series of class |
h |
Number of periods for forecasting |
level |
Confidence levels for prediction intervals. |
fan |
If TRUE, level is set to seq(51,99,by=3). This is suitable for fan plots. |
x |
Deprecated. Included for backwards compatibility. |
Details
The theta method of Assimakopoulos and Nikolopoulos (2000) is equivalent to simple exponential smoothing with drift. This is demonstrated in Hyndman and Billah (2003).
The series is tested for seasonality using the test outlined in A&N. If deemed seasonal, the series is seasonally adjusted using a classical multiplicative decomposition before applying the theta method. The resulting forecasts are then reseasonalized.
Prediction intervals are computed using the underlying state space model.
More general theta methods are available in the
forecTheta
package.
Value
An object of class "forecast
".
The function summary
is used to obtain and print a summary of the
results, while the function plot
produces a plot of the forecasts and
prediction intervals.
The generic accessor functions fitted.values
and residuals
extract useful features of the value returned by rwf
.
An object of class "forecast"
is a list containing at least the
following elements:
model |
A list containing information about the fitted model |
method |
The name of the forecasting method as a character string |
mean |
Point forecasts as a time series |
lower |
Lower limits for prediction intervals |
upper |
Upper limits for prediction intervals |
level |
The confidence values associated with the prediction intervals |
x |
The original time series
(either |
residuals |
Residuals from the fitted model. That is x minus fitted values. |
fitted |
Fitted values (one-step forecasts) |
Author(s)
Rob J Hyndman
References
Assimakopoulos, V. and Nikolopoulos, K. (2000). The theta model: a decomposition approach to forecasting. International Journal of Forecasting 16, 521-530.
Hyndman, R.J., and Billah, B. (2003) Unmasking the Theta method. International J. Forecasting, 19, 287-290.
See Also
Examples
nile.fcast <- thetaf(Nile)
plot(nile.fcast)