Using five alternative data sets and a range of specifications concerning the underlying linear predictability models, we study whether long-run dynamic optimizing portfolio strategies may actually outperform simpler benchmarks in out-of-sample tests. The dynamic portfolio problems are solved using a combination of dynamic programming and Monte Carlo methods. The benchmarks are represented by two typical fixed mix strategies: the celebrated equally-weighted portfolio and a myopic, Markowitz-style strategy that fails to account for any predictability in asset returns. Within a framework in which the investor maximizes expected HARA (constant relative risk aversion) utility in a frictionless market, our key finding is that there are enormous ...
Utility theory and Monte Carlo simulations are used to calculate optimal allocation for long term as...
This paper examines the effects of uncertainty about the predictability of stock returns on optimal ...
This article re-assesses the evidence and practical relevance of asset returns’ long-horizon predict...
Using five alternative data sets and a range of specifications concerning the underlying linear pred...
Out-of-sample experiments cast doubt on the ability of portfolio optimising strategies to outperform...
Optimization based solely on the REIT returns in a historical time window is severely restricted by ...
Abstract: Dynamic portfolio choice crucially depends on the predictability of re-turns. The existenc...
The classical Markowitz approach to portfolio selection is compromised by two major shortcomings. Fi...
In this paper, the out-of-sample performances of the sample-based multi-period dynamic mean-variance...
This is a draft version and must not be quoted. Comments are very welcome. A common approach in port...
Recent evidence of predictability in asset returns has led to an increased interest in dynamic asset...
We present a novel approach to dynamic portfolio selection that is no more difficult to implement th...
This study explores whether optimal asset allocation strategies, defined by permutations and combina...
We solve the dynamic mean-variance portfolio problem and derive its time-consistent solution using d...
The research presented in this thesis addresses different aspects of dynamic portfolio construction ...
Utility theory and Monte Carlo simulations are used to calculate optimal allocation for long term as...
This paper examines the effects of uncertainty about the predictability of stock returns on optimal ...
This article re-assesses the evidence and practical relevance of asset returns’ long-horizon predict...
Using five alternative data sets and a range of specifications concerning the underlying linear pred...
Out-of-sample experiments cast doubt on the ability of portfolio optimising strategies to outperform...
Optimization based solely on the REIT returns in a historical time window is severely restricted by ...
Abstract: Dynamic portfolio choice crucially depends on the predictability of re-turns. The existenc...
The classical Markowitz approach to portfolio selection is compromised by two major shortcomings. Fi...
In this paper, the out-of-sample performances of the sample-based multi-period dynamic mean-variance...
This is a draft version and must not be quoted. Comments are very welcome. A common approach in port...
Recent evidence of predictability in asset returns has led to an increased interest in dynamic asset...
We present a novel approach to dynamic portfolio selection that is no more difficult to implement th...
This study explores whether optimal asset allocation strategies, defined by permutations and combina...
We solve the dynamic mean-variance portfolio problem and derive its time-consistent solution using d...
The research presented in this thesis addresses different aspects of dynamic portfolio construction ...
Utility theory and Monte Carlo simulations are used to calculate optimal allocation for long term as...
This paper examines the effects of uncertainty about the predictability of stock returns on optimal ...
This article re-assesses the evidence and practical relevance of asset returns’ long-horizon predict...