forecastLSW-package |
Forecasting for locally stationary (wavelet) time series based on the local partial autocorrelation function. |
abml |
Gross Value Added (GVA, Average) at basis prices: CP SA time series / second differenced series |
abmld2 |
Gross Value Added (GVA, Average) at basis prices: CP SA time series / second differenced series |
analyze.abmld2 |
Analyzes the abmld2 data, see below for more details. |
analyze.windanomaly |
Analyzes the windanomaly data, see below for more details. |
dforecastlpacf |
Forecasts future values of the time series 'x' 'h'-steps ahead. (for the specified horizon 'h') using the lpacf to decide the dimension of the generalized Yule-Walker equations. |
forecastlpacf |
Forecasts future values of the time series 'x' 'h'-steps ahead. (for the specified horizon 'h') using the lpacf to decide the dimension of the generalized Yule-Walker equations. |
forecastpanel |
Function to produce a plot of data forecasts. |
fp.forecast |
Do automatic Box-Jenkins ARIMA fit and forecast. |
plot.forecastlpacf |
Plot the results of forecasting using 'forecastlpacf' |
print.forecastlpacf |
Prints a 'forecastlpacf' object |
summary.forecastlpacf |
Print out summary information about a 'forecastlpacf' object |
testforecast |
Compare locally stationary forecasting with Box-Jenkins-type forecasting, by predicting the final values of a time series. |
which.wavelet.best |
Find out what wavelet is good for forecasting your series. |
windanomaly |
Eq. Pacific meridional wind anomaly index, Jan 1900 - June 2005 |