Optimal test for Markov switching parameters

  • Marine Carrasco
  • , Liang Hu
  • , Werner Ploberger

    Research output: Contribution to journalArticlepeer-review

    44 Scopus citations

    Abstract

    This paper proposes a class of optimal tests for the constancy of parameters in random coefficients models. Our testing procedure covers the class of Hamilton's models, where the parameters vary according to an unobservable Markov chain, but also applies to nonlinear models where the random coefficients need not be Markov. We show that the contiguous alternatives converge to the null hypothesis at a rate that is slower than the standard rate. Therefore, standard approaches do not apply. We use Bartlett-type identities for the construction of the test statistics. This has several desirable properties. First, it only requires estimating the model under the null hypothesis where the parameters are constant. Second, the proposed test is asymptotically optimal in the sense that it maximizes a weighted power function. We derive the asymptotic distribution of our test under the null and local alternatives. Asymptotically valid bootstrap critical values are also proposed.

    Original languageEnglish
    Pages (from-to)765-784
    Number of pages20
    JournalEconometrica
    Volume82
    Issue number2
    DOIs
    StatePublished - Mar 2014

    Keywords

    • Information matrix test
    • Markov switching model
    • Neyman-Pearson lemma
    • Optimal test
    • Random coefficients model

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