Nikolaus Hautsch
;
Lada M. Kyj
;
Roel C. A. Oomen
You're currently viewing an old version of this dataset. To see the current version, click here.

a blocking and regularization approach to high-dimensional realized covariance estimation (replication data)

We introduce a blocking and regularization approach to estimate high-dimensional covariances using high-frequency data. Assets are first grouped according to liquidity. Using the multivariate realized kernel estimator of Barndorff-Nielsen et al. (2010), the covariance matrix is estimated block-wise and then regularized. The performance of the resulting blocking and regularization (?RnB?) estimator is analyzed in an extensive simulation study mimicking the liquidity and market microstructure features of the S&P 1500 universe. The RnB estimator yields efficiency gains for varying liquidity settings, noise-to-signal ratios and dimensions. An empirical application of estimating daily covariances of the S&P 500 index confirms the simulation results.

Data and Resources

This dataset has no data

Suggested Citation

Hautsch, Nikolaus; Kyj, Lada M.; Oomen, Roel C. A. (2012): A blocking and regularization approach to high-dimensional realized covariance estimation (replication data). Version: 1. Journal of Applied Econometrics. Dataset. https://journaldata.zbw.eu/dataset/a-blocking-and-regularization-approach-to-highdimensional-realized-covariance-estimation?activity_id=1829ca5b-0b17-43a0-99e5-5a80c52b771f