Measurement and assessment of systematic risk of selected industries in stock exchange using wavelet approach
Publish place: Iranian Journal of Finance، Vol: 2، Issue: 4
Publish Year: 1397
Type: Journal paper
Language: English
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Document National Code:
JR_IJFIFSA-2-4_003
Index date: 13 April 2022
Measurement and assessment of systematic risk of selected industries in stock exchange using wavelet approach abstract
Investment is an essential factor in a country’s economic development. Meanwhile, return and risk have been effective factors in investment. Today, many financial economists have accepted Risk or Beta as a standard tool for assessing the risk involved in certain actions. This paper has been conducted to find a way to obtain the risk of industries in different timescales included in the short-term and long-term. The statistical population includes a daily index of selected industries (including banks and the food, and car industries) from 2009 to 2014. The present study has measured the risk in different timescales using the wavelet analysis, and consequently, the risk time series have been expressed using a State- Space model. The direct relation between the risk of the selected industries and the market have been eventuated in which, an increase in return of the market would lead to an increase in return of industries and this has also been proven when there is a reduction in return.
Measurement and assessment of systematic risk of selected industries in stock exchange using wavelet approach Keywords:
Measurement and assessment of systematic risk of selected industries in stock exchange using wavelet approach authors
Ghodratollah Emamverdi
Assistant Prof., Department of Economics, Islamic Azad University central Tehran branch, Tehran, Iran.
Mojtaba Karimi
Ph.D. Candidate, Department of Finance, Islamic Azad University South Tehran Branch, Tehran, Iran.
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