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A0169
Title: Model averaging prediction for possibly nonstationary autoregressions Authors:  Chu-An Liu - Academia Sinica (Taiwan) [presenting]
Tzu-Chi Lin - Federal Reserve Bank of Philadelphia (United States)
Abstract: As an alternative to model selection (MS), the focus is on model averaging (MA) for integrated autoregressive processes of infinite order. We derive a uniformly asymptotic expression for the mean squared prediction error (MSPE) of the averaging prediction with fixed weights and then propose a Mallows-type criterion to select the data-driven weights that minimize the MSPE asymptotically. We show that the proposed MA estimator and its variants, Shibata and Akaike MA estimators, are asymptotically optimal in the sense of achieving the lowest possible MSPE. We further demonstrate that MA can provide significant MSPE reduction over MS when the model misspecification bias is algebraic decay. These theoretical findings are supported by Monte Carlo simulations and real data analysis.