A model averaging approach for the ordered probit and nested logit models with applications

Longmei Chen, Alan T. K. Wan*, Geoffrey Tso, Xinyu Zhang

*Corresponding author for this work

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

    11 Citations (Scopus)

    Abstract

    This paper considers model averaging for the ordered probit and nested logit models, which are widely used in empirical research. Within the frameworks of these models, we examine a range of model averaging methods, including the jackknife method, which is proved to have an optimal asymptotic property in this paper. We conduct a large-scale simulation study to examine the behaviour of these model averaging estimators in finite samples, and draw comparisons with model selection estimators. Our results show that while neither averaging nor selection is a consistently better strategy, model selection results in the poorest estimates far more frequently than averaging, and more often than not, averaging yields superior estimates. Among the averaging methods considered, the one based on a smoothed version of the Bayesian Information criterion frequently produces the most accurate estimates. In three real data applications, we demonstrate the usefulness of model averaging in mitigating problems associated with the ‘replication crisis’ that commonly arises with model selection.
    Original languageEnglish
    Pages (from-to)1-41
    JournalJournal of Applied Statistics
    Volume45
    Issue number16
    Online published21 Mar 2018
    DOIs
    Publication statusPublished - 2018

    Research Keywords

    • Hit rate
    • model averaging
    • model selection
    • Monte Carlo
    • nested logit
    • ordered probit
    • screening

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