We investigate the possible drawbacks of employing the standard Pearson estimator to measure correlation coefficients between financial stocks in the presence of non-stationary behavior, and we provide empirical evidence against the well-established common knowledge that using longer price time series provides better, more accurate, correlation estimates. Then, we investigate the possible consequences of instabilities in empirical correlation coefficient measurements on optimal portfolio selection. We rely on previously published works which provide a framework allowing to take into account possible risk underestimations due to the non-optimality of the portfolio weights being used in order to distinguish such non-optimality effects from ri...
Financial markets are prominent examples for highly non-stationary systems. Sample averaged observab...
Low correlations between asset returns increase the portfolio diversification benefits and for U.S. ...
In this paper a correction factor for Jennrich's statistic is introduced in order to be able not onl...
We investigate the possible drawbacks of employing the standard Pearson estimator to measure correla...
The growing interest of physicists in economic problems has led to the emergence of a new interdisci...
Optimal portfolios differ according to the length of time they are held without being rebalanced. Fo...
A parameterization that is a modified version of a previous work is proposed for the returns and cor...
Optimal portfolios differ according to the length of time they are held without being rebalanced. Fo...
Understanding correlations in complex systems is crucial in the face of turbulence, such as the ongo...
To implement mean variance analysis one needs a technique for forecasting correlation coefficients. ...
Pearson correlation and mutual information-based complex networks of the day-to-day returns of U.S. ...
The goal of this paper was to introduce some general issues of non-stationarity for practitioners, s...
This paper assesses the economic value of modeling conditional correlations for mean–variance portfo...
During world financial crisis it became obvious that classical models of portfolio theory significan...
To implement mean variance analysis one needs a technique for forecasting correlation coefficients. ...
Financial markets are prominent examples for highly non-stationary systems. Sample averaged observab...
Low correlations between asset returns increase the portfolio diversification benefits and for U.S. ...
In this paper a correction factor for Jennrich's statistic is introduced in order to be able not onl...
We investigate the possible drawbacks of employing the standard Pearson estimator to measure correla...
The growing interest of physicists in economic problems has led to the emergence of a new interdisci...
Optimal portfolios differ according to the length of time they are held without being rebalanced. Fo...
A parameterization that is a modified version of a previous work is proposed for the returns and cor...
Optimal portfolios differ according to the length of time they are held without being rebalanced. Fo...
Understanding correlations in complex systems is crucial in the face of turbulence, such as the ongo...
To implement mean variance analysis one needs a technique for forecasting correlation coefficients. ...
Pearson correlation and mutual information-based complex networks of the day-to-day returns of U.S. ...
The goal of this paper was to introduce some general issues of non-stationarity for practitioners, s...
This paper assesses the economic value of modeling conditional correlations for mean–variance portfo...
During world financial crisis it became obvious that classical models of portfolio theory significan...
To implement mean variance analysis one needs a technique for forecasting correlation coefficients. ...
Financial markets are prominent examples for highly non-stationary systems. Sample averaged observab...
Low correlations between asset returns increase the portfolio diversification benefits and for U.S. ...
In this paper a correction factor for Jennrich's statistic is introduced in order to be able not onl...