Forecasting Routines for Locally Stationary Wavelet Processes


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Documentation for package ‘forecastLSW’ version 1.0

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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