Portfolio selection using the Riskiness Index
Studies in Economics and Finance
ISSN: 1086-7376
Article publication date: 29 May 2018
Issue publication date: 20 June 2018
Abstract
Purpose
The purpose of this paper is to increase the accuracy of the efficient portfolios frontier and the capital market line using the Riskiness Index.
Design/methodology/approach
This paper will develop the mean-riskiness model for portfolio selection using the Riskiness Index.
Findings
This paper’s main result is establishing a mean-riskiness efficient set of portfolios. In addition, the paper presents two applications for the mean-riskiness portfolio management method: one that is based on the multi-normal distribution (which is identical to the MV model optimal portfolio) and one that is based on the multi-normal inverse Gaussian distribution (which increases the portfolio’s accuracy, as it includes the a-symmetry and tail-heaviness features in addition to the scale and diversification features of the MV model).
Research limitations/implications
The Riskiness Index is not a coherent measurement of financial risk, and the mean-riskiness model application is based on a high-order approximation to the portfolio’s rate of return distribution.
Originality/value
The mean-riskiness model increases portfolio management accuracy using the Riskiness Index. As the approximation order increases, the portfolio’s accuracy increases as well. This result can lead to a more efficient asset allocation in the capital markets.
Keywords
Acknowledgements
The author wishes to thank Professor Haim Shalit for his guidance and Professor Niklas Wagner (editor) and the anonymous reviewers for their helpful insights regarding precision and presentation. The research in this paper was carried out independently and received no external funding.
Citation
Nisani, D. (2018), "Portfolio selection using the Riskiness Index", Studies in Economics and Finance, Vol. 35 No. 2, pp. 330-339. https://doi.org/10.1108/SEF-03-2017-0058
Publisher
:Emerald Publishing Limited
Copyright © 2018, Emerald Publishing Limited