The traditional estimated return for the Markowitz mean-variance optimization has been demonstrated to seriously depart from its theoretic optimal return. We prove that this phenomenon is natural and the estimated optimal return is always $\sqrt{\gamma}$ times larger than its theoretic counterpart where $\gamma = \frac 1{1-y}$ with $y$ as the ratio of the dimension to sample size. Thereafter, we develop new bootstrap-corrected estimations for the optimal return and its asset allocation and prove that these bootstrap-corrected estimates are proportionally consistent with their theoretic counterparts. Our theoretical results are further confirmed by our simulations, which show that the essence of the portfolio analysis problem could be ade...
In this study, Markowitz mean-variance approach is tested on Istanbul Stock Exchange (BIST). 252 day...
Markowitz mean-variance portfolios with sample mean and covariance as input parameters feature numer...
Markowitz optimisation is well known to work poorly in practice, but it has not been clear why this ...
The traditional estimated return for the Markowitz mean-variance optimization has been demonstrated...
The traditional estimated return for the Markowitz mean-variance optimization has been demonstrated ...
The traditional estimated return for the Markowitz mean-variance optimization has been demonstrated ...
The traditional(plug-in) return for the Markowitz mean-variance (MV) optimization has been demonstra...
This paper considers the portfolio problem for high dimensional data when the dimension and size are...
This paper considers the portfolio problem for high dimensional data when the dimension and size are...
The traditional (plug-in) return for the Markowitz mean-variance (MV) optimization has been demonstr...
Modern finance theory is based on the simple concept of risk and return trade-off. Risk is based upo...
The paper presents some consideration on consideration on portfolio investment: beyond the Markowitz...
Estimating and assessing the variance-covariance matrix (risk) of a large portfolio is an important ...
The Behavioral Portfolio Theory (BPT) developed by Shefrin and Statman is often confronted to the Ma...
We look at investment portfolio optimization. We create portfolios consisting of five stocks and a s...
In this study, Markowitz mean-variance approach is tested on Istanbul Stock Exchange (BIST). 252 day...
Markowitz mean-variance portfolios with sample mean and covariance as input parameters feature numer...
Markowitz optimisation is well known to work poorly in practice, but it has not been clear why this ...
The traditional estimated return for the Markowitz mean-variance optimization has been demonstrated...
The traditional estimated return for the Markowitz mean-variance optimization has been demonstrated ...
The traditional estimated return for the Markowitz mean-variance optimization has been demonstrated ...
The traditional(plug-in) return for the Markowitz mean-variance (MV) optimization has been demonstra...
This paper considers the portfolio problem for high dimensional data when the dimension and size are...
This paper considers the portfolio problem for high dimensional data when the dimension and size are...
The traditional (plug-in) return for the Markowitz mean-variance (MV) optimization has been demonstr...
Modern finance theory is based on the simple concept of risk and return trade-off. Risk is based upo...
The paper presents some consideration on consideration on portfolio investment: beyond the Markowitz...
Estimating and assessing the variance-covariance matrix (risk) of a large portfolio is an important ...
The Behavioral Portfolio Theory (BPT) developed by Shefrin and Statman is often confronted to the Ma...
We look at investment portfolio optimization. We create portfolios consisting of five stocks and a s...
In this study, Markowitz mean-variance approach is tested on Istanbul Stock Exchange (BIST). 252 day...
Markowitz mean-variance portfolios with sample mean and covariance as input parameters feature numer...
Markowitz optimisation is well known to work poorly in practice, but it has not been clear why this ...