The global minimum variance portfolio (GMVP) is the starting point of the Markowitz mean-variance efficient frontier. The estimation of the GMVP weights is therefore of much importance for financial investors. The GMVP weights depend only on the inverse covariance matrix of returns on financial risky assets, for this reason the estimated GMVP weights are subject to substantial estimation risk, especially in high-dimensional portfolio settings. In this paper we review the recent literature on traditional sample estimators for the unconditional GMVP weights which are typically based on daily asset returns, as well as on modern realized estimators for the conditional GMVP weights based on intraday high-frequency returns. We present various typ...
Bodnar and Schmid (2008) derived the distribution of the global minimum variance portfolio weights a...
The problem of how to determine portfolio weights so that the variance of portfolio returns is minim...
This paper studies the performance of the Global Minimum Variance Portfolio (GMV Portfolio) construc...
We estimate the global minimum variance (GMV) portfolio in the high-dimensional case using results f...
In this paper, we construct two tests for the weights of the global minimum variance portfolio (GMVP...
Traditional portfolio optimization has often been criticized for not taking estimation risk into acc...
This thesis addresses the modeling and prediction of portfolio weights in high-dimensional applicati...
This paper studies the returns of efficient portfolios based on different estimations of the covaria...
We propose a novel dynamic approach to forecast the weights of the global minimum variance portfolio...
This paper studies the out of sample risk reduction of global minimum variance portfolio. The analys...
This research uses four different methods of variance-covariance estimation namely Traditional, Trad...
We study the realized variance of sample minimum variance portfolios of arbitrarily high dimension. ...
We propose direct multiple time series models for predicting high dimensional vectors of observable ...
We use the Minimum Regularised Covariance Determinant Estimator (MRCD) to limit weights’ misspecific...
The main purpose of this thesis is to give a basic understanding of the GMV portfolio theory and the...
Bodnar and Schmid (2008) derived the distribution of the global minimum variance portfolio weights a...
The problem of how to determine portfolio weights so that the variance of portfolio returns is minim...
This paper studies the performance of the Global Minimum Variance Portfolio (GMV Portfolio) construc...
We estimate the global minimum variance (GMV) portfolio in the high-dimensional case using results f...
In this paper, we construct two tests for the weights of the global minimum variance portfolio (GMVP...
Traditional portfolio optimization has often been criticized for not taking estimation risk into acc...
This thesis addresses the modeling and prediction of portfolio weights in high-dimensional applicati...
This paper studies the returns of efficient portfolios based on different estimations of the covaria...
We propose a novel dynamic approach to forecast the weights of the global minimum variance portfolio...
This paper studies the out of sample risk reduction of global minimum variance portfolio. The analys...
This research uses four different methods of variance-covariance estimation namely Traditional, Trad...
We study the realized variance of sample minimum variance portfolios of arbitrarily high dimension. ...
We propose direct multiple time series models for predicting high dimensional vectors of observable ...
We use the Minimum Regularised Covariance Determinant Estimator (MRCD) to limit weights’ misspecific...
The main purpose of this thesis is to give a basic understanding of the GMV portfolio theory and the...
Bodnar and Schmid (2008) derived the distribution of the global minimum variance portfolio weights a...
The problem of how to determine portfolio weights so that the variance of portfolio returns is minim...
This paper studies the performance of the Global Minimum Variance Portfolio (GMV Portfolio) construc...