method = "arima"
), an AR model (method = "ar"
),
an exponential smoothing method (method = "ets"
), a linear exponential smoothing
method allowing missing values (method = "ets.na"
), or a random walk with drift model
(method = "rwdrift"
). The forecast coefficients are then multiplied by the principal
components to obtain a forecast curve.ftsmiterativeforecasts(object, components, iteration = 20)
fts
containing point forecasts.fts
containing lower bound for prediction intervals.fts
containing upper bound for prediction intervals.fts
of one-step-ahead forecasts for historical data.fts
of one-step-ahead errors for historical data.forecast
containing the coefficients and their forecasts.ftsm
model.2. Decompose the smooth curves via a functional principal component analysis.
3. Fit a univariate time series model to each of the principal component scores.
4. Forecast the principal component scores using the fitted time series models.
5. Multiply the forecast principal component scores by fixed principal components to obtain forecasts of $f_{n+h}(x)$.
6. The estimated variances of the error terms (smoothing error and model residual error) are used to compute prediction intervals for the forecasts.
B. Erbas and R. J. Hyndman and D. M. Gertig (2007) "Forecasting age-specific breast cancer mortality using functional data model", Statistics in Medicine, 26(2), 458-470.
R. J. Hyndman and M. S. Ullah (2007) "Robust forecasting of mortality and fertility rates: A functional data approach", Computational Statistics and Data Analysis, 51(10), 4942-4956.
R. J. Hyndman and H. Booth (2008) "Stochastic population forecasts using functional data models for mortality, fertility and migration", International Journal of Forecasting, 24(3), 323-342.
R. J. Hyndman and H. L. Shang (2009) "Forecasting functional time series" (with discussion), Journal of the Korean Statistical Society, 38(3), 199-221.
ftsm
, plot.ftsf
, plot.fm
, residuals.fm
, summary.fm
# Iterative one-step-ahead forecasts via functional principal component analysis.
ftsmiterativeforecasts(Australiasmoothfertility, components = 2, iteration = 5)
Run the code above in your browser using DataLab