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Does Introduction of Stock Options Impact Stock Volatility? Empirical Evidence from Underlying Stocks in Indian Market

机译:引入股票期权会影响股票波动吗?来自印度市场基础股票的经验证据

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Present study investigates the impact of single stock option trading on the volatility of the underlying stocks in Indian market using data of companies listed on National Stock Exchange (NSE) of India. The daily stock price data for a period of 1 year prior and post option introduction is extracted for 166 companies which offer options trading on the platform of NSE. Pre and post volatility of the underlying stocks is measured using standard deviation and GARCH (1, 1) model. Then the sample has been split into three groups based on the market capitalization of the stocks, i.e. , large cap, mid cap, and small cap. Pre and post option listing volatility was tested for three groups separately. The highest average volatility is recorded for large cap stocks, followed by mid cap, and lowest for small cap stocks using GARCH (1, 1) model. This contrasts with the results of daily variance, as variance is highest for the small cap, followed by large cap and lowest for mid cap firms. Results show that for the large cap firms, volatility increases after the option listing, using both the measure of measures of volatility; and statistically insignificant decline has been recorded in the daily variance and average long-run volatility measure (V _( L ) ) using GARCH (1, 1) model for mid cap, and small cap firms.
机译:本研究使用在印度国家证券交易所(NSE)上市的公司的数据调查了单一股票期权交易对印度市场基础股票波动的影响。提取了166家在NSE平台上提供期权交易的公司在引入期权之前和之后的一年内的每日股票价格数据。基础股票的前后波动率使用标准差和GARCH(1,1)模型进行测量。然后根据股票的市值将样本分为三类,即大盘,中盘和小盘。期权上市前后的波动率分别针对三组进行了测试。使用GARCH(1,1)模型,大盘股的平均波动率最高,其次是中盘股,小盘股的平均波动率最低。这与每日方差的结果形成对比,因为小型公司的方差最高,其次是大型公司,中型公司最低。结果表明,对于大型上市公司来说,使用两种波动率度量方法,期权上市后的波动率都会增加。对于中型和中型公司,使用GARCH(1,1)模型记录了每日方差和平均长期波动率测量值(V _(L)),在统计上没有明显的下降。

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