Regime-based asset allocation has been shown to add value over rebalancing to static weights and, in particular, reduce potential drawdowns by reacting to changes in market conditions. The predominant approach in previous studies has been to specify in advance a static decision rule for changing the allocation based on the state of financial markets or the economy. This talk proposes the use of model predictive control to dynamically optimize a portfolio based on forecasts of the mean and variance of financial returns from a hidden Markov model with time-varying parameters. There are computational advantages to using model predictive control when estimates of future returns are updated repeatedly, since the optimal control actions are recon...
The aim of this thesis is to develop a Markov Regime Switching framework that can be used in asset a...
This paper revisits the problem of the strategic asset allocation between stocks and bonds. The nove...
In this dissertation, a control-theoretic decision model is proposed for an agent to “optimally” all...
Regime-based asset allocation has been shown to add value over rebalancing to static weights and, in...
In this article, model predictive control is used to dynamically optimize an investment portfolio an...
In this talk, model predictive control (MPC) is used to dynamically optimize an investment portfolio...
We consider portfolio optimization in a regime-switching market. The assets of the portfolio are mod...
The existing literature about portfolio management has investigated how to update a portfolio alloca...
Optimization based solely on the REIT returns in a historical time window is severely restricted by ...
We propose a novel multi-period trading model that allows portfolio managers to perform optimal port...
Many financial decision problems require scenarios for multivariate financial time series that captu...
Abstract—We discuss an optimal asset allocation problem in a wide class of discrete-time regime-swit...
Recent evidence of predictability in asset returns has led to an increased interest in dynamic asset...
This paper investigates optimal portfolio strategies in a market with partial information on the dri...
© World Scientific Publishing CompanyIn this work we introduce an adaptive method of portfolio optim...
The aim of this thesis is to develop a Markov Regime Switching framework that can be used in asset a...
This paper revisits the problem of the strategic asset allocation between stocks and bonds. The nove...
In this dissertation, a control-theoretic decision model is proposed for an agent to “optimally” all...
Regime-based asset allocation has been shown to add value over rebalancing to static weights and, in...
In this article, model predictive control is used to dynamically optimize an investment portfolio an...
In this talk, model predictive control (MPC) is used to dynamically optimize an investment portfolio...
We consider portfolio optimization in a regime-switching market. The assets of the portfolio are mod...
The existing literature about portfolio management has investigated how to update a portfolio alloca...
Optimization based solely on the REIT returns in a historical time window is severely restricted by ...
We propose a novel multi-period trading model that allows portfolio managers to perform optimal port...
Many financial decision problems require scenarios for multivariate financial time series that captu...
Abstract—We discuss an optimal asset allocation problem in a wide class of discrete-time regime-swit...
Recent evidence of predictability in asset returns has led to an increased interest in dynamic asset...
This paper investigates optimal portfolio strategies in a market with partial information on the dri...
© World Scientific Publishing CompanyIn this work we introduce an adaptive method of portfolio optim...
The aim of this thesis is to develop a Markov Regime Switching framework that can be used in asset a...
This paper revisits the problem of the strategic asset allocation between stocks and bonds. The nove...
In this dissertation, a control-theoretic decision model is proposed for an agent to “optimally” all...