We present a completely automated optimization strategy which combines the classical Markowitz mean-variance portfolio theory with a recently proposed test for structural breaks in covariance matrices. With respect to equity portfolios, global minimum-variance optimizations, which base solely on the covariance matrix, yield considerable results in previous studies. However, financial assets cannot be assumed to have a constant covariance matrix over longer periods of time. Hence, we estimate the covariance matrix of the assets by respecting potential change points. The resulting approach resolves the issue of determining a sample for parameter estimation. Moreover, we investigate if this approach is also appropriate for timing the re...
The mean-variance principle of Markowitz (1952) for portfolio selection gives disappointing results ...
The use of improved covariance matrix estimators as an alternative to the sample estimator is consi...
International audienceThis paper presents how the most recent improvements made on covariance matrix...
We present a completely automated optimization strategy which combines the classical Markowitz mean...
We present a completely automated optimization strategy which combines the classical Markowitz mean-...
A completely automated optimization strategy for global minimum-variance portfolios based on a new t...
International audience—We study the design of minimum variance portfolio when asset returns follow a...
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...
Mean-variance portfolio optimization requires both invertible and well-conditioned covariance matric...
URL des Documents de travail : https://centredeconomiesorbonne.univ-paris1.fr/documents-de-travail-d...
59 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2006.This thesis aims to develop te...
International audienceWe study the design of portfolios under a minimum risk criterion. The performa...
In dynamic minimum variance portfolio, we study the impact of the sequence of covariance matrices ta...
The objective of this paper is to study the stability of the mean-variance portfolio optimization. T...
The mean-variance principle of Markowitz (1952) for portfolio selection gives disappointing results ...
The use of improved covariance matrix estimators as an alternative to the sample estimator is consi...
International audienceThis paper presents how the most recent improvements made on covariance matrix...
We present a completely automated optimization strategy which combines the classical Markowitz mean...
We present a completely automated optimization strategy which combines the classical Markowitz mean-...
A completely automated optimization strategy for global minimum-variance portfolios based on a new t...
International audience—We study the design of minimum variance portfolio when asset returns follow a...
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...
Mean-variance portfolio optimization requires both invertible and well-conditioned covariance matric...
URL des Documents de travail : https://centredeconomiesorbonne.univ-paris1.fr/documents-de-travail-d...
59 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2006.This thesis aims to develop te...
International audienceWe study the design of portfolios under a minimum risk criterion. The performa...
In dynamic minimum variance portfolio, we study the impact of the sequence of covariance matrices ta...
The objective of this paper is to study the stability of the mean-variance portfolio optimization. T...
The mean-variance principle of Markowitz (1952) for portfolio selection gives disappointing results ...
The use of improved covariance matrix estimators as an alternative to the sample estimator is consi...
International audienceThis paper presents how the most recent improvements made on covariance matrix...