1. A blocking and regularization approach to high dimensional realized covariance estimation
- Author
-
Hautsch, Nikolaus, Kyj, Lada M., and Oomen, Roel C.A.
- Subjects
regularization ,covariance estimation ,realized kernel ,330 Wirtschaft ,microstructure ,ddc:330 ,blocking ,asynchronous trading - Abstract
We introduce a regularization and blocking estimator for well-conditioned high-dimensional daily covariances using high-frequency data. Using the Barndorff-Nielsen, Hansen, Lunde, and Shephard (2008a) kernel estimator, we estimate the covariance matrix block-wise and regularize it. A data-driven grouping of assets of similar trading frequency ensures the reduction of data loss due to refresh time sampling. In an extensive simulation study mimicking the empirical features of the S&P 1500 universe we show that the ’RnB’ estimator yields efficiency gains and outperforms competing kernel estimators for varying liquidity settings, noise-to-signal ratios, and dimensions. An empirical application of forecasting daily covariances of the S&P 500 index confirms the simulation results.
- Published
- 2009