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**itsmr**: Time series analysis package for students**wine**: Australian red wine sales, January 1980 to October 1991

# Australian red wine sales, January 1980 to October 1991

### Description

Australian red wine sales, January 1980 to October 1991

### Examples

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- aacvf: Autocovariance of ARMA model
- acvf: Autocovariance of data
- airpass: Number of international airline passengers, 1949 to 1960
- arar: Forecast using ARAR algorithm
- ar.inf: Compute AR infinity coefficients
- arma: Estimate ARMA model coefficients using maximum likelihood
- autofit: Find the best model from a range of possible ARMA models
- burg: Estimate AR coefficients using the Burg method
- check: Check for causality and invertibility
- deaths: USA accidental deaths, 1973 to 1978
- dowj: Dow Jones utilities index, August 28 to December 18, 1972
- forecast: Forecast future values
- hannan: Estimate ARMA coefficients using the Hannan-Rissanen...
- hr: Estimate harmonic components
- ia: Estimate MA coefficients using the innovations algorithm
- itsmr-package: Time series analysis package for students
- lake: Level of Lake Huron, 1875 to 1972
- ma.inf: Compute MA infinity coefficients
- periodogram: Plot a periodogram
- plota: Plot data and/or model ACF and PACF
- plotc: Plot one or two time series
- plots: Plot spectrum of data or ARMA model
- Resid: Compute residuals
- season: Estimate seasonal component
- selftest: Run a self test
- sim: Generate synthetic observations
- smooth.exp: Apply an exponential filter
- smooth.fft: Apply a low pass filter
- smooth.ma: Apply a moving average filter
- smooth.rank: Apply a spectral filter
- specify: Specify an ARMA model
- strikes: USA union strikes, 1951-1980
- Sunspots: Number of sunspots, 1770 to 1869
- test: Test residuals for stationarity and randomness
- trend: Estimate trend component
- wine: Australian red wine sales, January 1980 to October 1991
- yw: Estimate AR coefficients using the Yule-Walker method