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Using the Residual White Noise Autoregressive Order Determination Criterion to Identify Unit Roots in Arima Models
Authors:Sergio G. Koreisha  Tarmo Pukkila
Affiliation:1. University of Oregon , Lundquist College of Business, Eugene, Oregon, 97403, USA;2. Insurance Department , Ministry of Social Affairs and Health, Helsinki, FIN-00171, Finland
Abstract:We present a simplified form of a univariate identification approach for time series models based on the residual white noise autoregressive order determination criterion and linear estimation methods. We also show how the procedure can be used to identify the degree of differencing necessary to induce stationarity in data. The performance of this approach is also contrasted with Portmanteau tests for detection of white noise residuals and with Dickey-Fuller and Bayesian procedures for detection of unit roots. Simulated and economic data are used to demonstrate the capabilities of the modified approach.
Keywords:ARIMA models  Differencing  Identification  Residual White Noise Autoregressive Criterion  Time series  Unit Roots
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