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Forecasting / Moving-average model / Partial autocorrelation function / Errors and residuals in statistics / Autoregressive fractionally integrated moving average / Regression analysis / Seasonality / Time series / Null / Statistics / Time series analysis / Autoregressive integrated moving average
Date: 2014-09-24 00:54:31
Forecasting
Moving-average model
Partial autocorrelation function
Errors and residuals in statistics
Autoregressive fractionally integrated moving average
Regression analysis
Seasonality
Time series
Null
Statistics
Time series analysis
Autoregressive integrated moving average

Package ‘forecast’ September 24, 2014 Version 5.6 Title Forecasting functions for time series and linear models Description Methods and tools for displaying and analysing univariate time series forecasts including ex

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