One of the crucial aspects in asset allocation problems is the assumption concerning the probability distribution of asset returns. Financial managers generally suppose normal distribution, even if extreme realizations usually have an higher frequency than in the Gaussian case. The aim of this paper is to propose a general Monte Carlo simulation approach able to solve an asset allocation problem with shortfall constraint, and to evaluate the exact portfolio risk-level when managers assume a misspecified return behaviour. We assume that returns are generated by a multivariate skewed Student-t distribution where each marginal can have different degrees of freedom. The stochastic optimization allows us to value the effective risk for managers...
<div><p>ABSTRACT In this paper, we provide an empirical discussion of the differences among some sce...
This thesis challenges several concepts in finance. Firstly, it is the Markowitz's solution to the p...
In this paper, we provide an empirical discussion of the differences among some scenario tree-genera...
One of the crucial aspects in asset allocation problems is the assumption concerning the probability...
In this paper we propose a novel methodology for optimal allocation of a portfolio of risky financia...
This research studies two modelling techniques that help seek optimal strategies in financial risk m...
This project covers the basics of Financial Portfolio Management theory through different stochastic...
The topic of this thesis is portfolio optimization under model ambiguity, i.e. a situation when the ...
Risk budgeting interpreted as efficient portfolio allocation is often based on expected outperforman...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Sloan School of Management, Operations Resea...
AbstractThis paper presents a new asset allocation model based on the CVaR risk measure and transact...
Stochastic optimization is an effective tool for analyzing decision problems under uncertainty. In s...
Abstract The Monte Carlo Simulation consists of simulating a stochastic model several times, to est...
Combinatorial optimization has been at the heart of financial and risk management. This body of rese...
We analyze a multistage stochastic asset allocation problem with decision rules. The uncertainty is ...
<div><p>ABSTRACT In this paper, we provide an empirical discussion of the differences among some sce...
This thesis challenges several concepts in finance. Firstly, it is the Markowitz's solution to the p...
In this paper, we provide an empirical discussion of the differences among some scenario tree-genera...
One of the crucial aspects in asset allocation problems is the assumption concerning the probability...
In this paper we propose a novel methodology for optimal allocation of a portfolio of risky financia...
This research studies two modelling techniques that help seek optimal strategies in financial risk m...
This project covers the basics of Financial Portfolio Management theory through different stochastic...
The topic of this thesis is portfolio optimization under model ambiguity, i.e. a situation when the ...
Risk budgeting interpreted as efficient portfolio allocation is often based on expected outperforman...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Sloan School of Management, Operations Resea...
AbstractThis paper presents a new asset allocation model based on the CVaR risk measure and transact...
Stochastic optimization is an effective tool for analyzing decision problems under uncertainty. In s...
Abstract The Monte Carlo Simulation consists of simulating a stochastic model several times, to est...
Combinatorial optimization has been at the heart of financial and risk management. This body of rese...
We analyze a multistage stochastic asset allocation problem with decision rules. The uncertainty is ...
<div><p>ABSTRACT In this paper, we provide an empirical discussion of the differences among some sce...
This thesis challenges several concepts in finance. Firstly, it is the Markowitz's solution to the p...
In this paper, we provide an empirical discussion of the differences among some scenario tree-genera...