Tail Heterogeneity for Dynamic Covariance-Matrix-Valued Random Variables: the F-Riesz Distribution

Date
Thursday 29 Apr 2021, 12:00 - 13:00
Type
Seminar
Spoken Language
English
Location

Online

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We introduce the new F-Riesz distribution to model tail-heterogeneity in fat-tailed covariance matrix observations.

In contrast to the typical matrix-valued distributions from the econometric literature, the F-Riesz distribution allows for different tail behavior across all variables in the system. We study the consistency properties of the maximum likelihood estimator in both static and dynamic models with F-Riesz innovations using both one-step and two-step (targeting) estimation techniques. Allowing for tail-heterogeneity when modeling covariance matrices appears empirically highly relevant. When applying the new distribution to realized covariance matrices of 30 U.S. stocks over a 14 year period, we find huge likelihood increases both in-sample and out-of-sample compared to all competing distributions, including the Wishart, inverse Wishart, Riesz, inverse Riesz, and matrix-F distribution.

(joint with Chico Blasques, Andre Lucas and Anne Opschoor)

Participation

If you would like to participate in the seminar, please send an email to the secretariat of Econometrics, eb-secr@ese.eur.nl

organizers

More information

Secretariat Econometrics
Phone: +31 (0)10 408 12 59/ 12 64
Email: eb-secr@ese.eur.nl

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