We study the realized variance of sample minimum variance portfolios of arbitrarily high dimension. We consider the use of covariance matrix estimators based on shrinkage and weighted sampling. For such improved portfolio implementations, the otherwise intractable problem of characterizing the realized variance is tackled here by analyzing the asymptotic convergence of the risk measure. Rather than relying on less insightful classical asymptotics, we manage to deliver results in a practically more meaningful limiting regime, where the number of assets remains comparable in magnitude to the sample size. Under this framework, we provide accurate estimates of the portfolio realized risk in terms of the model parameters and the underlying inves...
In this paper, we derive two shrinkage estimators for minimum-variance portfolios that dominate the ...
Shrinkage estimators of the covariance matrix are known to improve the sta-bility over time of the G...
Optimal portfolio selection problems are determined by the (unknown) parameters of the data generat...
We study the consistency of large-dimensional minimum variance portfolios that are estimated on the ...
We estimate the global minimum variance (GMV) portfolio in the high-dimensional case using results f...
International audience—We study the design of portfolios under a minimum risk criterion. The perform...
International audience—We study the design of portfolios under a minimum risk criterion. The perform...
International audienceWe study the design of portfolios under a minimum risk criterion. The performa...
International audience—We study the design of portfolios under a minimum risk criterion. The perform...
Abstract—We study the design of portfolios under a minimum risk criterion. The performance of the op...
International audienceWe study the design of portfolios under a minimum risk criterion. The performa...
In this article, we estimate the mean-variance portfolio in the high-dimensional case using the rece...
International audienceWe study the design of portfolios under a minimum risk criterion. The performa...
International audienceWe study the design of portfolios under a minimum risk criterion. The performa...
We investigate the asset allocation optimization under the time-varying high frequency global minimu...
In this paper, we derive two shrinkage estimators for minimum-variance portfolios that dominate the ...
Shrinkage estimators of the covariance matrix are known to improve the sta-bility over time of the G...
Optimal portfolio selection problems are determined by the (unknown) parameters of the data generat...
We study the consistency of large-dimensional minimum variance portfolios that are estimated on the ...
We estimate the global minimum variance (GMV) portfolio in the high-dimensional case using results f...
International audience—We study the design of portfolios under a minimum risk criterion. The perform...
International audience—We study the design of portfolios under a minimum risk criterion. The perform...
International audienceWe study the design of portfolios under a minimum risk criterion. The performa...
International audience—We study the design of portfolios under a minimum risk criterion. The perform...
Abstract—We study the design of portfolios under a minimum risk criterion. The performance of the op...
International audienceWe study the design of portfolios under a minimum risk criterion. The performa...
In this article, we estimate the mean-variance portfolio in the high-dimensional case using the rece...
International audienceWe study the design of portfolios under a minimum risk criterion. The performa...
International audienceWe study the design of portfolios under a minimum risk criterion. The performa...
We investigate the asset allocation optimization under the time-varying high frequency global minimu...
In this paper, we derive two shrinkage estimators for minimum-variance portfolios that dominate the ...
Shrinkage estimators of the covariance matrix are known to improve the sta-bility over time of the G...
Optimal portfolio selection problems are determined by the (unknown) parameters of the data generat...