Publication | Open Access
Closed-Form Multi-Factor Copula Models With Observation-Driven Dynamic Factor Loadings
35
Citations
37
References
2020
Year
New Factor ModelsLatent ModelingAsset PricingFinancial Time Series AnalysisU.s. StocksStatisticsFinancial EconometricsQuantitative ManagementFinancial ModelingQuantitative FinanceLatent Variable ModelFunctional Data AnalysisFinanceFinancial EconomicsBusinessNew ModelsStatistical InferenceMultivariate AnalysisHigh-frequency Financial EconometricsCopulas
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.
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