Large Skew-t Copula Models and Asymmetric Dependence in Intraday Equity Returns
Skew-t copula models are attractive for the modeling of financial data because they allow for asymmetric and extreme tail dependence. We show that the copula implicit in the skew-t distribution of Azzalini and Capitanio (2003) allows for a higher level of pairwise asymmetric dependence than two popu...
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Zusammenfassung: | Skew-t copula models are attractive for the modeling of financial data
because they allow for asymmetric and extreme tail dependence. We show that the
copula implicit in the skew-t distribution of Azzalini and Capitanio (2003)
allows for a higher level of pairwise asymmetric dependence than two popular
alternative skew-t copulas. Estimation of this copula in high dimensions is
challenging, and we propose a fast and accurate Bayesian variational inference
(VI) approach to do so. The method uses a generative representation of the
skew-t distribution to define an augmented posterior that can be approximated
accurately. A stochastic gradient ascent algorithm is used to solve the
variational optimization. The methodology is used to estimate skew-t factor
copula models with up to 15 factors for intraday returns from 2017 to 2021 on
93 U.S. equities. The copula captures substantial heterogeneity in asymmetric
dependence over equity pairs, in addition to the variability in pairwise
correlations. In a moving window study we show that the asymmetric dependencies
also vary over time, and that intraday predictive densities from the skew-t
copula are more accurate than those from benchmark copula models. Portfolio
selection strategies based on the estimated pairwise asymmetric dependencies
improve performance relative to the index. |
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DOI: | 10.48550/arxiv.2308.05564 |