Evaluating The Performance Of Garch Family Models In Estimating Investment Risk And Volatility: A Comparative Analysis Of Sensex And Nifty Index In India
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Keywords
volatility clustering; financial market; empirical volatility; forecasting; GARCH models; stock index;All these keywords.
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