We introduce a new scalable model for dynamic conditional correlation matrices based on a recursion of dynamic bivariate partial correlation models. By exploiting the model’s recursive structure and the theory of perturbed stochastic recurrence equations, we establish stationarity, ergodicity, and filter invertibility in the multivariate setting using conditions for bivariate slices of the data only. From this, we establish consistency and asymptotic normality of the maximum likelihood estimator for the model’s static parameters. The new model outperforms benchmarks like the t-cDCC and the multivariate t-GAS, both in simulations and in an in-sample and out-of-sample asset pricing application to US stock returns.

Enzo DInnocenzo, Andre Lucas (2024). Dynamic partial correlation models. JOURNAL OF ECONOMETRICS, 241(2), 1-17 [10.1016/j.jeconom.2024.105747].

Dynamic partial correlation models

Enzo DInnocenzo;
2024

Abstract

We introduce a new scalable model for dynamic conditional correlation matrices based on a recursion of dynamic bivariate partial correlation models. By exploiting the model’s recursive structure and the theory of perturbed stochastic recurrence equations, we establish stationarity, ergodicity, and filter invertibility in the multivariate setting using conditions for bivariate slices of the data only. From this, we establish consistency and asymptotic normality of the maximum likelihood estimator for the model’s static parameters. The new model outperforms benchmarks like the t-cDCC and the multivariate t-GAS, both in simulations and in an in-sample and out-of-sample asset pricing application to US stock returns.
2024
Enzo DInnocenzo, Andre Lucas (2024). Dynamic partial correlation models. JOURNAL OF ECONOMETRICS, 241(2), 1-17 [10.1016/j.jeconom.2024.105747].
Enzo DInnocenzo; Andre Lucas
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/968439
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