N. M. N., S. Chakraborty, L. B. M., Sanket Ledwani, Satyakam
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Modeling Indian Bank Nifty volatility using univariate GARCH models
The crumble of financial markets due to the recent crises has wobbled precariousness in the stock market and intensified the returns vulnerability of banking indices. Against this backdrop, this study intends to model the volatility of the Indian Bank Nifty returns using a battery of GARCH specifications. The finding of the present research contributes to the literature in three ways. First, volatility during the sample period, which corresponds to a time of stress (a bear market), is more persistent, with an estimated coefficient of 0.995695. Moreover, when volatility rises, it persists for a long time before returning to the mean in an average of 16 days. Second, for a positive γ, the results insinuate the possibility of an “anti-leverage effect” with a coefficient of 0.139638. Thus, the volatility of the Bank Nifty returns tends to rise in response to positive shocks relative to negative shocks of equal magnitude in India. Finally, the findings demonstrate that EGARCH with Student’s t-distribution offers lower forecast errors in modeling conditional volatility.
期刊介绍:
The journal focuses on the results of scientific researches on monetary policy issues in different countries and regions all over the world. It also analyzes the activities of international financial organizations, central banks, and bank institutions. Key topics: -Monetary Policy in Different Countries and Regions; -Monetary and Payment Systems; -International Financial Organizations and Institutions; -Monetary Policy of Central Banks; -Organizational Structure, Functions and Activities of Central Banks; -State Policy and Regulation of Banking; -Bank Competitiveness; -Banks at the Financial Markets; -Bank Associations and Conglomerates; -International Payment Systems; -Investment Banking; -Financial Risks and Risk Management in Banks; -Capital and Ownership Structure, Bankruptcy and Liquidation, Mergers and Acquisitions of Banks; -Corporate Governance and Goodwill; -Personnel Management in Banks; -Econometric, Statistical Methods; Econometric Modeling of Bank Activities; -Bank Ratings.