The optimization of a large random portfolio under the expected shortfall risk measure with an l(2) regularizer is carried out by analytical calculation for the case of uncorrelated Gaussian returns. The regularizer reins in the large sample fluctuations and the concomitant divergent estimation error, and eliminates the phase transition where this error would otherwise blow up. In the data-dominated region, where the number N of different assets in the portfolio is much less than the length T of the available time series, the regularizer plays a negligible role even if its strength eta is large, while in the opposite limit, where the size of samples is comparable to, or even smaller than the number of assets, the optimum is almost entirely ...
UnrestrictedPenalization or regularization is an important integration to the traditional regression...
The mean-variance principle of Markowitz (1952) for portfolio selection gives disappointing results ...
The portfolio optimization model has limited impact in practice due to estimation issues when applie...
The optimization of a large random portfolio under the expected shortfall risk measure with an ℓ 2 r...
The optimization of a large random portfolio under the expected shortfall risk measure with an regul...
Expected Shortfall (ES), the average loss above a high quantile, is the current financial regulatory...
Expected Shortfall (ES), the average loss above a high quantile, is the current financial regulatory...
The optimization of the variance of a portfolio of N independent but not identically distributed ass...
The contour maps of the error of historical resp. parametric estimates for large random portfolios o...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Sloan School of Management, Operations Resea...
Investors who optimize their portfolios under any of the coherent risk mea-sures are naturally led t...
The ideas of Markowitz indisputably constitute a milestone in portfolio theory, even though the resu...
The ideas of Markowitz indisputably constitute a milestone in portfolio theory, even though the resu...
This dissertation develops regularization methods for use in finance and econometrics problems. The...
The optimization of the variance of a portfolio of N independent but not identically distributed ass...
UnrestrictedPenalization or regularization is an important integration to the traditional regression...
The mean-variance principle of Markowitz (1952) for portfolio selection gives disappointing results ...
The portfolio optimization model has limited impact in practice due to estimation issues when applie...
The optimization of a large random portfolio under the expected shortfall risk measure with an ℓ 2 r...
The optimization of a large random portfolio under the expected shortfall risk measure with an regul...
Expected Shortfall (ES), the average loss above a high quantile, is the current financial regulatory...
Expected Shortfall (ES), the average loss above a high quantile, is the current financial regulatory...
The optimization of the variance of a portfolio of N independent but not identically distributed ass...
The contour maps of the error of historical resp. parametric estimates for large random portfolios o...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Sloan School of Management, Operations Resea...
Investors who optimize their portfolios under any of the coherent risk mea-sures are naturally led t...
The ideas of Markowitz indisputably constitute a milestone in portfolio theory, even though the resu...
The ideas of Markowitz indisputably constitute a milestone in portfolio theory, even though the resu...
This dissertation develops regularization methods for use in finance and econometrics problems. The...
The optimization of the variance of a portfolio of N independent but not identically distributed ass...
UnrestrictedPenalization or regularization is an important integration to the traditional regression...
The mean-variance principle of Markowitz (1952) for portfolio selection gives disappointing results ...
The portfolio optimization model has limited impact in practice due to estimation issues when applie...