Xin Jin
;
John M. Maheu
;
Qiao Yang
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bayesian parametric and semiparametric factor models for large realized covariance matrices (replication data)

This paper introduces a new factor structure suitable for modeling large realized covariance matrices with full likelihood-based estimation. Parametric and nonparametric versions are introduced. Because of the computational advantages of our approach, we can model the factor nonparametrically as a Dirichlet process mixture or as an infinite hidden Markov mixture, which leads to an infinite mixture of inverse-Wishart distributions. Applications to 10 assets and 60 assets show that the models perform well. By exploiting parallel computing the models can be estimated in a matter of a few minutes.

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Suggested Citation

Jin, Xin; Maheu, John M.; Yang, Qiao (2019): Bayesian parametric and semiparametric factor models for large realized covariance matrices (replication data). Version: 1. Journal of Applied Econometrics. Dataset. https://journaldata.zbw.eu/dataset/bayesian-parametric-and-semiparametric-factor-models-for-large-realized-covariance-matrices?activity_id=a68e928f-04b7-4f15-988a-5214ef090d03