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Statistica Sinica 23 (2013), 873-899





MODEL IDENTIFICATION FOR TIME SERIES WITH

DEPENDENT INNOVATIONS


Shuhao Chen, Wanli Min and Rong Chen


Bank of America, Google and Rutgers University


Abstract: This paper investigates the impact of dependent but uncorrelated innovations (errors) on the traditional autoregressive moving average model (ARMA) order determination schemes such as autocorrelation function (ACF), partial autocorrelation function (PACF), extended autocorrelation function (EACF), and the unit-root test. The ARMA models with iid innovations have been studied extensively and are well-posed, but their properties with dependent but uncorrelated innovations are relatively less studied. In the presence of such innovations, we show that the ACF, PACF, and EACF are significantly impacted while the unit-root test is not affected. We also propose a new order determination scheme to address those impacts for analyzing time series with uncorrelated innovations.



Key words and phrases: ACF, EACF, GARCH, PACF, order determination, time series, uncorrelated but dependent errors, unit-root test.

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