Abstract

Value at Risk model based on a switching regime approach was used in this study to optimize portfolios consisting of industry index (petroleum products, investment, chemical products, and metal products). For this purpose, the VaR of returns on index should first be extracted through parametric models of the (GARCH) family in each of the above industries by using regime transitions. After the risk of return on index is obtained for each industry, the optimal portfolio is created in the next step based on VaR minimization, and the optimal value of each industry is determined in the portfolio. According to the results, (MRS-FIEGARCH) model had no superiority in VaR estimation over the other parametric models of the GARCH family. In fact (MS-EGARCH-t) was introduced as the optimal model. Among the designated industries, returns on indices followed regime transitions only in chemical products and investment by showing asymmetric reactions to external shocks. Moreover, the optimal weights were on the rise in the industries where VaR decreased over time, whereas the optimal weight of the portfolio decreased in the industries where VaR increased over time. The higher share of an optimal portfolio belonged to the industries where stock returns had lower rates of VaR. The risk-return-ratio was employed to show that the optimal portfolio with a risk rate was measured by considering the switching regime was superior over the optimal portfolio with a risk rate extracted without considering the switching effects. To create an optimal portfolio, it is then recommended to make investments in the industries characterized by higher stability in prices and lower fluctuations in stock returns in the long run. This approach can be employed to obtain the best results from optimal portfolio preparation in the worst-case scenario of the market fluctuations.

Highlights

  • Activities in financial markets are prone to risk and uncertainty, and investment risk is a major problem which an investor is faced within the stock market

  • The data used in this research are the daily stock prices of selected industries including metal products, chemical products, petroleum products, investment from 2008/12/14 to 2019/06/10these series are sourced from the Tehran Stock

  • This finding is consistent with the results reported by Almasi et al (2017), whereas it is inconsistent with the results reported by Fakhafi et al (2016) who employed FIEGARCH and showed that negative news had greater impacts on conventional banks than Islamic banks and that negative shocks persisted longer in conventional banks

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Summary

Introduction

Activities in financial markets are prone to risk and uncertainty, and investment risk is a major problem which an investor is faced within the stock market. Many studies have shown that there is a positive correlation between risk and return; a major challenge in portfolio preparation is to determine an optimal proportion or weight of the portfolio stocks for risk mitigation (Zolfaghari & Faghihian, 2018). This is so important that various statistical methods and models have been proposed for quantitative risk measurement based on trading strategies in these markets. The optimal portfolio is created during 7–35-day time horizons

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