Quantile Factor Models

44 Pages Posted: 20 Feb 2018

See all articles by Liang Chen

Liang Chen

Shanghai University of Finance and Economics - School of Economics

Juan Dolado

European University Institute

Jesús Gonzalo

Charles III University of Madrid - Department of Statistics and Econometrics; Aarhus University - Department of Economics and Business Economics

Date Written: February 2018

Abstract

Quantile factor models (QFM) represent a new class of factor models for high-dimensional panel data. Unlike approximate factor models (AFM), which only extract mean factors, QFM also allow unobserved factors to shift other relevant parts of the distributions of observables. We propose a quantile regression approach, labeled Quantile Factor Analysis (QFA), to consistently estimate all the quantile-dependent factors and loadings. Their asymptotic distributions are established using a kernel-smoothed version of the QFA estimators. Two consistent model selection criteria, based on information criteria and rank minimization, are developed to determine the number of factors at each quantile. QFA estimation remains valid even when the idiosyncratic errors exhibit heavy-tailed distributions. An empirical application illustrates the usefulness of QFA by highlighting the role of extra factors in the forecasts of US GDP growth and inflation rates using a large set of predictors.

Suggested Citation

Chen, Liang and Dolado, Juan and Gonzalo Muñoz, Jesús, Quantile Factor Models (February 2018). CEPR Discussion Paper No. DP12716, Available at SSRN: https://ssrn.com/abstract=3126210

Liang Chen (Contact Author)

Shanghai University of Finance and Economics - School of Economics ( email )

777 Guoding Road
Shanghai, 200433
China

Juan Dolado

European University Institute ( email )

Villa Schifanoia
133 via Bocaccio
Firenze (Florence), Tuscany 50014
Italy

Jesús Gonzalo Muñoz

Charles III University of Madrid - Department of Statistics and Econometrics ( email )

c/ Madrid 126
Getafe (Madrid), 28903
Spain
34 + 91 624 9853 (Phone)
34 + 91 624 9849 (Fax)

Aarhus University - Department of Economics and Business Economics

Fuglesangs Allé 4
Aarhus V
Denmark

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