Two important problems arising in traditional asset allocation methods are the sensitivity to estimation error of portfolio weights and the high dimensionality of the set of candidate assets. In this paper, we address both issues by proposing a new criterion for portfolio selection. The new criterion is a two-stage description of the available information, where the q-entropy, a generalized measure of information, is used to code the uncertainty of the data given the parametric model and the uncertainty related to the model choice. The information about the model is coded in terms of a prior distribution that promotes asset weights sparsity. Our approach carries out model selection and estimation in a single step, by selecting a few assets ...
This paper studies the mean-variance (MV) portfolio problems under static and dynamic settings, part...
In this thesis, a portfolio optimization with integer variables which influ- ence optimal assets all...
This dissertation explores the use of information entropy as a risk measure for the purpose of inves...
Two important problems arising in traditional asset allocation methods are the sensitivity to estima...
In investment management, especially for automated investment services, it is critical for portfolio...
Accounting for the non-normality of asset returns remains challenging in robust portfolio optimizati...
We develop a new minimum description length criterion for index tracking, which deals with two main ...
Accounting for the non-normality of asset returns remains challenging in robust portfolio optimizati...
Many optimization problems involve parameters which are not known in advance, but can only be foreca...
We analyze two robust portfolio selection models, where a mean-variance investor considers possible ...
Abstract In this paper, we consider the robust portfolio selection problem which has a data uncertai...
We investigate a robust version of the portfolio selection problem under a risk measure based on the...
The ideas of Markowitz indisputably constitute a milestone in portfolio theory, even though the resu...
Abstract In this paper, we propose `p-norm regularized models to seek near-optimal sparse portfolios...
The ideas of Markowitz indisputably constitute a milestone in portfolio theory, even though the resu...
This paper studies the mean-variance (MV) portfolio problems under static and dynamic settings, part...
In this thesis, a portfolio optimization with integer variables which influ- ence optimal assets all...
This dissertation explores the use of information entropy as a risk measure for the purpose of inves...
Two important problems arising in traditional asset allocation methods are the sensitivity to estima...
In investment management, especially for automated investment services, it is critical for portfolio...
Accounting for the non-normality of asset returns remains challenging in robust portfolio optimizati...
We develop a new minimum description length criterion for index tracking, which deals with two main ...
Accounting for the non-normality of asset returns remains challenging in robust portfolio optimizati...
Many optimization problems involve parameters which are not known in advance, but can only be foreca...
We analyze two robust portfolio selection models, where a mean-variance investor considers possible ...
Abstract In this paper, we consider the robust portfolio selection problem which has a data uncertai...
We investigate a robust version of the portfolio selection problem under a risk measure based on the...
The ideas of Markowitz indisputably constitute a milestone in portfolio theory, even though the resu...
Abstract In this paper, we propose `p-norm regularized models to seek near-optimal sparse portfolios...
The ideas of Markowitz indisputably constitute a milestone in portfolio theory, even though the resu...
This paper studies the mean-variance (MV) portfolio problems under static and dynamic settings, part...
In this thesis, a portfolio optimization with integer variables which influ- ence optimal assets all...
This dissertation explores the use of information entropy as a risk measure for the purpose of inves...