This chapter discusses techniques for analysis and optimization of portfolio statistics, based on direct use of samples of random data. For a given and fixed portfolio of financial assets, a classical approach for evaluating, say, the valueat- risk (V@R) of the portfolio is a model-based one, whereby one first assumes some stochastic model for the component returns (e.g., Normal), then estimates the parameters of this model from data, and finally computes the portfolio V@R. Such a process hinges upon critical assumptions (e.g., the elicited return distribution), and leaves unclear the effects of model estimation errors on the computed quantity of interest. Here, we propose an alternative direct route that bypasses the assumption an...
This paper presents a scenario-based multistage stochastic programming model to deal with multi-peri...
The goal of the portfolio optimization problem is to minimize risk for an expected portfolio return ...
Recent studies stressed the fact that covariance matrices computed from empirical financial time ser...
This chapter discusses techniques for analysis and optimization of portfolio statistics, based on di...
Stochastic Programming (SP) models are widely used for real life problems involving uncertainty. The...
We solve a linear chance constrained portfolio optimization problem using Robust Optimization (RO) m...
This paper proposes a novel methodology for optimal allocation of a portfolio of risky financial ass...
Finally, we study the index tracking and the enhanced index tracking problems. We present two mixed-...
We present an algorithm for moment-matching scenario generation. This method produces scenarios and ...
This project covers the basics of Financial Portfolio Management theory through different stochastic...
In this thesis we will find the optimum portfolio for a given set of assets. Since the return is a r...
In this paper we propose a problem-driven scenario generation approach to the single-period portfoli...
This paper introduces a new methodology to optimize the allocation of financial assets. The objecti...
We develop and test multistage portfolio selection models maximizing expected end-of-horizon return ...
In this paper we propose a novel methodology for optimal allocation of a portfolio of risky financia...
This paper presents a scenario-based multistage stochastic programming model to deal with multi-peri...
The goal of the portfolio optimization problem is to minimize risk for an expected portfolio return ...
Recent studies stressed the fact that covariance matrices computed from empirical financial time ser...
This chapter discusses techniques for analysis and optimization of portfolio statistics, based on di...
Stochastic Programming (SP) models are widely used for real life problems involving uncertainty. The...
We solve a linear chance constrained portfolio optimization problem using Robust Optimization (RO) m...
This paper proposes a novel methodology for optimal allocation of a portfolio of risky financial ass...
Finally, we study the index tracking and the enhanced index tracking problems. We present two mixed-...
We present an algorithm for moment-matching scenario generation. This method produces scenarios and ...
This project covers the basics of Financial Portfolio Management theory through different stochastic...
In this thesis we will find the optimum portfolio for a given set of assets. Since the return is a r...
In this paper we propose a problem-driven scenario generation approach to the single-period portfoli...
This paper introduces a new methodology to optimize the allocation of financial assets. The objecti...
We develop and test multistage portfolio selection models maximizing expected end-of-horizon return ...
In this paper we propose a novel methodology for optimal allocation of a portfolio of risky financia...
This paper presents a scenario-based multistage stochastic programming model to deal with multi-peri...
The goal of the portfolio optimization problem is to minimize risk for an expected portfolio return ...
Recent studies stressed the fact that covariance matrices computed from empirical financial time ser...