forecast.hdfpca {ftsa} | R Documentation |
Forecasting via a high-dimensional functional principal component regression
Description
Forecast high-dimensional functional principal component model.
Usage
## S3 method for class 'hdfpca'
forecast(object, h = 3, level = 80, B = 50, ...)
Arguments
object |
An object of class 'hdfpca' |
h |
Forecast horizon |
level |
Prediction interval level, the default is 80 percent |
B |
Number of bootstrap replications |
... |
Other arguments passed to forecast routine. |
Details
The low-dimensional factors are forecasted with autoregressive integrated moving average (ARIMA) models separately. The forecast functions are then calculated using the forecast factors. Bootstrap prediction intervals are constructed by resampling from the forecast residuals of the ARIMA models.
Value
forecast |
A list containing the h-step-ahead forecast functions for each population |
upper |
Upper confidence bound for each population |
lower |
Lower confidence bound for each population |
Author(s)
Y. Gao and H. L. Shang
References
Y. Gao, H. L. Shang and Y. Yang (2018) High-dimensional functional time series forecasting: An application to age-specific mortality rates, Journal of Multivariate Analysis, forthcoming.
See Also
Examples
## Not run:
hd_model = hdfpca(hd_data, order = 2, r = 2)
hd_model_fore = forecast.hdfpca(object = hd_model, h = 1)
## End(Not run)