International audienceThe global minimum variance portfolio computed using the sample covariance matrix is known to be negatively affected by parameter uncertainty, an important component of model risk. Using a robust approach, we introduce a portfolio rule for investors who wish to invest in the global minimum variance portfolio due to its strong historical track record, but seek a rule that is robust to parameter uncertainty. Our robust portfolio corresponds theoretically to the global minimum variance portfolio in the worst-case scenario, with respect to a set of plausible alternative estimators of the covariance matrix, in the neighbourhood of the sample covariance matrix. Hence, it provides protection against errors in the reference sa...
We derive analytical expressions for the risk of an investor’s expected utility under parameter unce...
In this thesis, we take the mean-risk approach to portfolio optimi- zation. We will first define ris...
In this thesis the effects of utilizing the sample covariance matrix in the estimation of the global...
International audienceThe global minimum variance portfolio computed using the sample covariance mat...
This paper presents new models which seek to optimize the first and second moments of asset returns ...
Abstract—We study the design of portfolios under a minimum risk criterion. The performance of the op...
This paper investigates model risk issues in the context of mean-variance portfolio selection. We an...
International audience—We study the design of portfolios under a minimum risk criterion. The perform...
A robust optimization has emerged as a powerful tool for managing un- certainty in many optimization...
Many studies show that mean-variance portfolios perform poorly, delivering suboptimal average out-of...
International audienceWe study the design of portfolios under a minimum risk criterion. The performa...
Traditional portfolio optimization has often been criticized for not taking estimation risk into acc...
International audienceThis paper presents how the most recent improvements made on covariance matrix...
This paper studies the out of sample risk reduction of global minimum variance portfolio. The analys...
I examine the performance of global minimum variance (GMV) and minimum tracking error variance (TEV)...
We derive analytical expressions for the risk of an investor’s expected utility under parameter unce...
In this thesis, we take the mean-risk approach to portfolio optimi- zation. We will first define ris...
In this thesis the effects of utilizing the sample covariance matrix in the estimation of the global...
International audienceThe global minimum variance portfolio computed using the sample covariance mat...
This paper presents new models which seek to optimize the first and second moments of asset returns ...
Abstract—We study the design of portfolios under a minimum risk criterion. The performance of the op...
This paper investigates model risk issues in the context of mean-variance portfolio selection. We an...
International audience—We study the design of portfolios under a minimum risk criterion. The perform...
A robust optimization has emerged as a powerful tool for managing un- certainty in many optimization...
Many studies show that mean-variance portfolios perform poorly, delivering suboptimal average out-of...
International audienceWe study the design of portfolios under a minimum risk criterion. The performa...
Traditional portfolio optimization has often been criticized for not taking estimation risk into acc...
International audienceThis paper presents how the most recent improvements made on covariance matrix...
This paper studies the out of sample risk reduction of global minimum variance portfolio. The analys...
I examine the performance of global minimum variance (GMV) and minimum tracking error variance (TEV)...
We derive analytical expressions for the risk of an investor’s expected utility under parameter unce...
In this thesis, we take the mean-risk approach to portfolio optimi- zation. We will first define ris...
In this thesis the effects of utilizing the sample covariance matrix in the estimation of the global...