Title of article :
Introduction of New Risk Metric using Kernel Density Estimation Via Linear Diffusion
Author/Authors :
Darestani Farahani, Ahmad Department of Finance - Islamic Azad University Science and Research Branch, Tehran , Miri Lavasani, Mohammadreza Department of HSE - Islamic Azad University Science and Research Branch, Tehran , Kordlouie, Hamidreza Department of Financial Management - Islamic Azad University Eslamshahr Branch, Tehran , Talebnia, Ghodratallah Department of Accounting - Islamic Azad University Science and Research Branch, Tehran
Pages :
10
From page :
467
To page :
476
Abstract :
Any investor in stock markets around the world has a deep concern about the shortfalls of allocation wealth to any stock without accurate estimation of related risks. As we review the literature of risk management methods, one of the main pillars for the risk management framework in defining risk measurement approach using historical data is the estimation of the probability distribution function. In this paper, we propose a new measure by using kernel density estimation via diffusion as a nonparametric approach in probability distribution estimation to enhance the accuracy of estimation and consider some distribution characteristics, investor risk aversion and target return which will make it more accurate, compre-hensive and consistent with stock historical performance and investor concerns.
Keywords :
Risk Measurement , Generalized Co-Lower Partial , Moment , Portfolio Optimization , Nonparametric estimation , Stock Market
Journal title :
Advances in Mathematical Finance and Applications
Serial Year :
2022
Record number :
2702157
Link To Document :
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