This paper proposes a new regression method based on the idea of graphical models to deal with regression problems with the number of covariates v larger than the sample size N. Unlike the regularization methods such as ridge regression, LASSO and LARS, which always give biased estimates for all parameters, the proposed method can give unbiased estimates for important parameters (a certain subset of all parameters). The new method is applied to a portfolio selection problem under the linear regression framework and, compared to other existing methods, it can assist in improving the portfolio performance by increasing its expected return and decreasing its risk. Another advantage of the proposed method is that it constructs a non-sparse (sat...
Markowitz portfolios often result in an unsatisfying out-of-sample performance, due to the presence ...
The first essay gives a unified theory of several applications of quadratic minimization subject to ...
The Excel based financial model proposed in this paper provides a very simple but powerful method fo...
This thesis introduces a new method for solving the linear regression problem where the number of ob...
In recent years, the L-1 regularization has been extensively used to estimate a sparse precision mat...
Preliminary and incomplete The mean-variance principle of Markowitz (1952) for portfolio selection g...
This dissertation provides theoretical and practical guidance for the use of graphical models, a too...
Graphical models are a powerful tool to estimate a high-dimensional inverse covariance (precision) m...
1 Introduction The basis of the modern portfolio theory was developed by Harry Markowitz and publis...
We apply the statistical technique of graphical lasso for inverse covariance estimation of asset pri...
The estimation of inverse covariance matrices plays a major role in portfolio optimization, for the ...
This research incorporates Bayesian estimation and optimization into portfolio selection framework, ...
The use of improved covariance matrix estimators as an alternative to the sample covariance is consi...
Modern Portfolio Theory (MPT) has been the canonical theoretical model of portfolio selection for ov...
This master thesis will investigate one solution to the problem issues with nested stochastic simula...
Markowitz portfolios often result in an unsatisfying out-of-sample performance, due to the presence ...
The first essay gives a unified theory of several applications of quadratic minimization subject to ...
The Excel based financial model proposed in this paper provides a very simple but powerful method fo...
This thesis introduces a new method for solving the linear regression problem where the number of ob...
In recent years, the L-1 regularization has been extensively used to estimate a sparse precision mat...
Preliminary and incomplete The mean-variance principle of Markowitz (1952) for portfolio selection g...
This dissertation provides theoretical and practical guidance for the use of graphical models, a too...
Graphical models are a powerful tool to estimate a high-dimensional inverse covariance (precision) m...
1 Introduction The basis of the modern portfolio theory was developed by Harry Markowitz and publis...
We apply the statistical technique of graphical lasso for inverse covariance estimation of asset pri...
The estimation of inverse covariance matrices plays a major role in portfolio optimization, for the ...
This research incorporates Bayesian estimation and optimization into portfolio selection framework, ...
The use of improved covariance matrix estimators as an alternative to the sample covariance is consi...
Modern Portfolio Theory (MPT) has been the canonical theoretical model of portfolio selection for ov...
This master thesis will investigate one solution to the problem issues with nested stochastic simula...
Markowitz portfolios often result in an unsatisfying out-of-sample performance, due to the presence ...
The first essay gives a unified theory of several applications of quadratic minimization subject to ...
The Excel based financial model proposed in this paper provides a very simple but powerful method fo...