International audienceWe study the design of portfolios under a minimum risk criterion. The performance of the optimized portfolio relies on the accuracy to the estimated covariance matrix of portfolio asset returns. For large portfolios, the sample size is often of similar order to the number of assets, and the traditional sample covariance matrix performs poorly. Additionally, financial market data often involve outliers and exhibit heavy-tails, which, if not correctly handled, may further corrupt the covariance estimation. We aim to address these problems by studying the performance of a hybrid covariance matrix estimator based on Tyler's robust M-estimator and on Ledoit-Wolf's shrinkage estimator. Employing recent results from random ma...
Shrinkage estimators of the covariance matrix are known to improve the stability over time of the gl...
Shrinkage estimators of the covariance matrix are known to improve the sta-bility over time of the G...
Shrinkage estimators of the covariance matrix are known to improve the stability over time of the gl...
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...
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...
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...
International audienceWe study the design of portfolios under a minimum risk criterion. The performa...
International audience—We study the design of minimum variance portfolio when asset returns follow a...
We study the realized variance of sample minimum variance portfolios of arbitrarily high dimension. ...
International audience—We study the design of minimum variance portfolio when asset returns follow a...
International audience—We study the design of minimum variance portfolio when asset returns follow a...
In modern portfolio theory, the covariance matrices of portfolio asset returns are always needed for...
Shrinkage estimators of the covariance matrix are known to improve the stability over time of the gl...
Shrinkage estimators of the covariance matrix are known to improve the sta-bility over time of the G...
Shrinkage estimators of the covariance matrix are known to improve the stability over time of the gl...
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...
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...
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...
International audienceWe study the design of portfolios under a minimum risk criterion. The performa...
International audience—We study the design of minimum variance portfolio when asset returns follow a...
We study the realized variance of sample minimum variance portfolios of arbitrarily high dimension. ...
International audience—We study the design of minimum variance portfolio when asset returns follow a...
International audience—We study the design of minimum variance portfolio when asset returns follow a...
In modern portfolio theory, the covariance matrices of portfolio asset returns are always needed for...
Shrinkage estimators of the covariance matrix are known to improve the stability over time of the gl...
Shrinkage estimators of the covariance matrix are known to improve the sta-bility over time of the G...
Shrinkage estimators of the covariance matrix are known to improve the stability over time of the gl...