Portfolio selection is vulnerable to the error-amplifying effects of combining optimization with statistical estimation and model error. For dynamic portfolio control, sources of model error include the evolution of market factors and the influence of these factors on asset returns. We develop portfolio control rules that are robust to this type of uncertainty, applying a stochastic notion of robustness to uncertainty in model dynamics. In this stochastic formulation, robustness reflects uncertainty about the probability law generating market data, and not just uncertainty about model parameters. We analyze both finite- and infinite-horizon problems in a model in which returns are driven by factors that evolve stochastically. The model inco...
Many financial optimization problems involve future values of security prices, interest rates and ex...
We study optimal stochastic control problems with jumps under model uncertainty. We rewrite such pro...
Many optimization problems involve parameters which are not known in advance, but can only be foreca...
This paper investigates the general approach that applies the concept of equivalent measures and the...
In this paper we formulate the portfolio choice problem as a robust control problem. Extending our p...
Many portfolio optimization techniques rely heavily on past data and modeling assumptions. In an unc...
Optimal investment decisions often rely on assumptions about the models and their associated parame...
A robust optimization has emerged as a powerful tool for managing un- certainty in many optimization...
In this paper we formulate the portfolio choice problem as a robust control problem. Extending our p...
We combine forward investment performance processes and ambiguity-averse portfolio selection. We int...
Many financial optimization problems involve future values of security prices, interest rates and ex...
Risk management has always been in key component of portfolio management. While more and more compli...
This paper investigates model risk issues in the context of mean-variance portfolio selection. We an...
Many studies show that mean-variance portfolios perform poorly, delivering suboptimal average out-of...
Decision making in a stochastic environment depends on the decision makers' models of the environmen...
Many financial optimization problems involve future values of security prices, interest rates and ex...
We study optimal stochastic control problems with jumps under model uncertainty. We rewrite such pro...
Many optimization problems involve parameters which are not known in advance, but can only be foreca...
This paper investigates the general approach that applies the concept of equivalent measures and the...
In this paper we formulate the portfolio choice problem as a robust control problem. Extending our p...
Many portfolio optimization techniques rely heavily on past data and modeling assumptions. In an unc...
Optimal investment decisions often rely on assumptions about the models and their associated parame...
A robust optimization has emerged as a powerful tool for managing un- certainty in many optimization...
In this paper we formulate the portfolio choice problem as a robust control problem. Extending our p...
We combine forward investment performance processes and ambiguity-averse portfolio selection. We int...
Many financial optimization problems involve future values of security prices, interest rates and ex...
Risk management has always been in key component of portfolio management. While more and more compli...
This paper investigates model risk issues in the context of mean-variance portfolio selection. We an...
Many studies show that mean-variance portfolios perform poorly, delivering suboptimal average out-of...
Decision making in a stochastic environment depends on the decision makers' models of the environmen...
Many financial optimization problems involve future values of security prices, interest rates and ex...
We study optimal stochastic control problems with jumps under model uncertainty. We rewrite such pro...
Many optimization problems involve parameters which are not known in advance, but can only be foreca...