Transcription of The ARIMA Procedure
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Chapter 7 The ARIMA ProcedureChapter Table of ..194 IdentificationStage ..194 Estimation and Diagnostic Checking Stage ..200 Forecasting ..206 Stationarity .. ,Seasonal,andFactoredARMAM odels ..211 Input Variables and Regression with ARMA Errors ..213 InterventionModelsandInterruptedTimeSeri es ..215 Rational Transfer Functions and Distributed Lag with Input Variables ..219 DataRequirements .. Statement ..234 The Partial Autocorrelation ..235 TheESACFM ethod ..239 Stationarity ..241 Identifying Transfer Function 2. General Inputs and Transfer Functions ..248 Initial Values.
ARIMA model includes other time series as input variables, the model is sometimes referred to as an ARIMAX model. Pankratz (1991) refers to the ARIMAX model as dynamic regression. The ARIMA procedure provides a comprehensive set of tools for univariate time se-ries model identification, parameter estimation, and forecasting, and it offers great
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