We develop two dynamic Bayesian portfolio allocation models that address questions of learning and model uncertainty by taking model-specific shortcomings into account.In our first model, we formulate a multi-period portfolio choice problem in which the investor is uncertain about parameters of the model, can learn these parameters over time from observing asset returns, but is also concerned about robustness. To address these concerns, we introduce an objective function which can be regarded as a Bayesian version of relative regret. The optimal portfolio is characterized and shown to involve a ``tilted'' posterior, where the tilting is defined in terms of a family of stochastic benchmarks. We have found this model to perform at least as we...
Motivated by applications in financial services, we consider a seller who offers prices sequen-tiall...
We employ a statistical criterion (out-of-sample hit rate) and a financial market measure (portfolio...
This paper considers learning when the distinction between risk and ambiguity (Knightian uncertainty...
How investors should allocate assets to their portfolios in the presence of predictable components i...
International audienceThis paper presents several models addressing optimal portfolio choice, optima...
This thesis concerns portfolio theory from a Bayesian perspective and it includes two papers related...
We propose a novel family of Bayesian learning algorithms for online portfolio selection that overco...
The paper solves the problem of optimal portfolio choice when the parameters of the asset returns di...
One of the main challenges investors have to face is model uncertainty. Typically, the dynamic of th...
We study the Markowitz portfolio selection problem with unknown drift vector in the multidimensiona...
The concept of portfolio optimization has been widely studied in the academy and implemented in the ...
The Black-Litterman model combines the market equilibrium with the investor's personal views and giv...
Thesis (Ph.D.)--Boston UniversityThis thesis studies model inference about risk and decision making ...
This research incorporates Bayesian estimation and optimization into portfolio selection framework, ...
A novel dynamic asset-allocation approach is proposed where portfolios as well as portfolio strategi...
Motivated by applications in financial services, we consider a seller who offers prices sequen-tiall...
We employ a statistical criterion (out-of-sample hit rate) and a financial market measure (portfolio...
This paper considers learning when the distinction between risk and ambiguity (Knightian uncertainty...
How investors should allocate assets to their portfolios in the presence of predictable components i...
International audienceThis paper presents several models addressing optimal portfolio choice, optima...
This thesis concerns portfolio theory from a Bayesian perspective and it includes two papers related...
We propose a novel family of Bayesian learning algorithms for online portfolio selection that overco...
The paper solves the problem of optimal portfolio choice when the parameters of the asset returns di...
One of the main challenges investors have to face is model uncertainty. Typically, the dynamic of th...
We study the Markowitz portfolio selection problem with unknown drift vector in the multidimensiona...
The concept of portfolio optimization has been widely studied in the academy and implemented in the ...
The Black-Litterman model combines the market equilibrium with the investor's personal views and giv...
Thesis (Ph.D.)--Boston UniversityThis thesis studies model inference about risk and decision making ...
This research incorporates Bayesian estimation and optimization into portfolio selection framework, ...
A novel dynamic asset-allocation approach is proposed where portfolios as well as portfolio strategi...
Motivated by applications in financial services, we consider a seller who offers prices sequen-tiall...
We employ a statistical criterion (out-of-sample hit rate) and a financial market measure (portfolio...
This paper considers learning when the distinction between risk and ambiguity (Knightian uncertainty...