Expected Shortfall (ES), the average loss above a high quantile, is the current financial regulatory market risk measure. Its estimation and optimization are highly unstable against sample fluctuations and become impossible above a critical ratio r=N/T , where N is the number of different assets in the portfolio, and T is the length of the available time series. The critical ratio depends on the confidence level α , which means we have a line of critical points on the α−r plane. The large fluctuations in the estimation of ES can be attenuated by the application of regularizers. In this paper, we calculate ES analytically under an ℓ1 regularizer by the method of replicas borrowed from the statistical physics of random systems. The ban ...
The issue of estimation risk is of particular interest to the decision-making processes of portfolio...
We consider the l1 -regularized Markowitz model, where a l1 -penalty term is added to the objecti...
We introduce and study the main properties of a class of convex risk measures that refine Expected S...
Expected Shortfall (ES), the average loss above a high quantile, is the current financial regulatory...
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...
We address the problem of portfolio optimization under the simplest coherent risk measure, i.e. the ...
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 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...
We address the problem of portfolio optimization under the simplest coherent risk measure, i.e. the ...
This paper proposes a novel methodology for optimal allocation of a portfolio of risky financial ass...
Quantifier et mesurer le risque dans un environnement partiellement ou totalement incertain est prob...
Expected Shortfall (ES), also known as superquantile or Conditional Value-at-Risk, has been recogniz...
The issue of estimation risk is of particular interest to the decision-making processes of portfolio...
We consider the l1 -regularized Markowitz model, where a l1 -penalty term is added to the objecti...
We introduce and study the main properties of a class of convex risk measures that refine Expected S...
Expected Shortfall (ES), the average loss above a high quantile, is the current financial regulatory...
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...
We address the problem of portfolio optimization under the simplest coherent risk measure, i.e. the ...
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 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...
We address the problem of portfolio optimization under the simplest coherent risk measure, i.e. the ...
This paper proposes a novel methodology for optimal allocation of a portfolio of risky financial ass...
Quantifier et mesurer le risque dans un environnement partiellement ou totalement incertain est prob...
Expected Shortfall (ES), also known as superquantile or Conditional Value-at-Risk, has been recogniz...
The issue of estimation risk is of particular interest to the decision-making processes of portfolio...
We consider the l1 -regularized Markowitz model, where a l1 -penalty term is added to the objecti...
We introduce and study the main properties of a class of convex risk measures that refine Expected S...