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Small- Versus Big-Data Factor Extraction in Dynamic Factor Models: An Empirical Assessment

Dynamic Factor Models

ISBN: 978-1-78560-353-2, eISBN: 978-1-78560-352-5

Publication date: 6 January 2016

Abstract

In the context of Dynamic Factor Models, we compare point and interval estimates of the underlying unobserved factors extracted using small- and big-data procedures. Our paper differs from previous works in the related literature in several ways. First, we focus on factor extraction rather than on prediction of a given variable in the system. Second, the comparisons are carried out by implementing the procedures considered to the same data. Third, we are interested not only on point estimates but also on confidence intervals for the factors. Based on a simulated system and the macroeconomic data set popularized by Stock and Watson (2012), we show that, for a given procedure, factor estimates based on different cross-sectional dimensions are highly correlated. On the other hand, given the cross-sectional dimension, the maximum likelihood Kalman filter and smoother factor estimates are highly correlated with those obtained using hybrid procedures. The PC estimates are somehow less correlated. Finally, the PC intervals based on asymptotic approximations are unrealistically tiny.

Keywords

Acknowledgements

Acknowledgments

Financial support from the Spanish Government projects ECO2012-32854 and ECO2012-32401 is acknowledged by the first and second authors, respectively. We are very grateful to comments received during the 16th Advances in Econometrics conference on DFMs held in CREATES, Aarhus university, in November 2014. Also the comments of two referees have been very helpful to obtain a more completed version of this paper. We are indeed grateful to them.

Citation

Poncela, P. and Ruiz, E. (2016), "Small- Versus Big-Data Factor Extraction in Dynamic Factor Models: An Empirical Assessment", Dynamic Factor Models (Advances in Econometrics, Vol. 35), Emerald Group Publishing Limited, Leeds, pp. 401-434. https://doi.org/10.1108/S0731-905320150000035010

Publisher

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Emerald Group Publishing Limited

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