A method to evaluate the rank condition for CCE estimators

Ignace De Vos, Gerdie Everaert, Vasilis Sarafidis

Research output: Contribution to JournalArticleAcademicpeer-review

Abstract

We develop a binary classifier to evaluate whether the rank condition (RC) is satisfied or not for the Common Correlated Effects (CCE) estimator. The RC postulates that the number of unobserved factors, m, is not larger than the rank of the unobserved matrix of average factor loadings, ϱ. When this condition fails, the CCE estimator is inconsistent, in general. Despite its importance, to date this rank condition could not be verified. The difficulty lies in the fact that factor loadings are unobserved, such that ϱ cannot be directly determined. The key insight in this article is that ϱ can be consistently estimated with existing techniques through the matrix of cross-sectional averages of the data. Similarly, m can be estimated consistently from the data using existing methods. Thus, a binary classifier, constructed by comparing estimates of m and ϱ, correctly determines whether the RC is satisfied or not as (N,T)→∞. We illustrate the practical relevance of testing the RC by studying the effect of the Dodd-Frank Act on bank profitability. The RC classifier reveals that the rank condition fails for a subperiod of the sample, in which case the estimated effect of bank size on profitability appears to be biased upwards.
Original languageEnglish
Pages (from-to)123-155
JournalEconometric Reviews
Volume43
Issue number2-4
DOIs
Publication statusPublished - 8 Jan 2024

Funding

Ignace De Vos acknowledges financial support from the Ghent University BOF research fund. Ignace De Vos and Gerdie Everaert further acknowledge financial support from the National Bank of Belgium. The authors thank Alexander Chudik, Arturas Juodis, George Kapetanios and Joakim Westerlund for helpful comments and discussions. This paper has also benefited from presentations at the 2017, 2018 International Panel Data Conference, the 2018 Asian and European Meetings of the Econometric Society and the 2019 Panel Data Workshop in Amsterdam.

FundersFunder number
Universiteit Gent
Nationale Bank van België
Alexander Chudik
Econometric Society

    Keywords

    • common factors
    • common correlated effects
    • rank condition

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