Description
We develop new multi-factor dynamic copula models with time-varying factor loadings and observation-driven dynamics. The new models are highly flexible, scalable to high dimensions, and ensure positivity of covariance and correlation matrices. A closed-form likelihood expression allows for straightforward parameter estimation and likelihood inference. We apply the new model to a large panel of 100 U.S. stocks over the period 2001–2014. The proposed multi-factor structure is much better than existing (single-factor) models at describing stock return dependence dynamics in high-dimensions. The new factor models also improve one-step-ahead copula density forecasts and global minimum variance portfolio performance. Finally, we investigate different mechanisms to allocate firms into groups and find that a simple industry classification outperforms alternatives based on observable risk factors, such as size, value, or momentum.
| Date made available | 1 Jan 2020 |
|---|---|
| Publisher | Unknown |
Research output
- 1 Article
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Closed-Form Multi-Factor Copula Models With Observation-Driven Dynamic Factor Loadings
Opschoor, A., Lucas, A., Barra, I. & van Dijk, D., 2021, In: Journal of Business and Economic Statistics. 39, 4, p. 1066-1079 14 p.Research output: Contribution to Journal › Article › Academic › peer-review
Open Access
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