Model averaging by jackknife criterion in models with dependent data

Xinyu Zhang, Alan T.K. Wan, Guohua Zou

    Research output: Journal Publications and ReviewsRGC 21 - Publication in refereed journalpeer-review

    116 Citations (Scopus)

    Abstract

    The past decade witnessed a literature on model averaging by frequentist methods. For the most part, the asymptotic optimality of various existing frequentist model averaging estimators has been established under i.i.d. errors. Recently, Hansen and Racine [Hansen, B.E., Racine, J., 2012. Jackknife model averaging. Journal of Econometrics 167, 38-46] developed a jackknife model averaging (JMA) estimator, which has an important advantage over its competitors in that it achieves the lowest possible asymptotic squared error under heteroscedastic errors. In this paper, we broaden Hansen and Racine's scope of analysis to encompass models with (i) a non-diagonal error covariance structure, and (ii) lagged dependent variables, thus allowing for dependent data. We show that under these set-ups, the JMA estimator is asymptotically optimal by a criterion equivalent to that used by Hansen and Racine. A Monte Carlo study demonstrates the finite sample performance of the JMA estimator in a variety of model settings. © 2013 Elsevier B.V. All rights reserved.
    Original languageEnglish
    Pages (from-to)82-94
    JournalJournal of Econometrics
    Volume174
    Issue number2
    DOIs
    Publication statusPublished - Jun 2013

    Research Keywords

    • Asymptotic optimality
    • Autocorrelation
    • Cross-validation
    • Lagged dependent variables
    • Model averaging
    • Squared error

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