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Rescaled Range Analysis – A Comparative Study on Bombay Stock Exchange and National Stock Exchange

Issue Abstract

Abstract
The present study is an attempt to find out the long range persistence of selected sample listed in BSE and NSE Sectoral Indices. To analyze the comparative study on Bombay Stock Exchange and National Stock Exchange (Special Reference with BSE Auto, Bankex & NSE Auto, Bankex ), Augmented Dickey Fuller Test, Phillips Perron Test for Stationarity, Autocorrelation, Normality test using Kolmogorov- Smirnov and Shapiro –Wilk Test, ARCH and GARCH model and Rescaled Range Analysis during the study period 01st April 2005 to 31st March 2017 of selected Sectoral Indices listed in Bombay Stock Exchange and National Stock Exchanges.. The findings of the study indicated that there is a persistence of long range memory in selected sample return of BSE and NSE during the study period.
Keywords: BSE Bankex & Auto and NSE Bankex & Auto, Persistence, Augmented Dickey Fuller Test, Rescaled Range Analysis.


Author Information
Dr. L. Vijaya Kumar
Issue No
4
Volume No
5
Issue Publish Date
05 Apr 2019
Issue Pages
44-55

Issue References

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