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Forecasting Volatility using High Frequency Data

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Figure

Figure 1 displays the estimated autocorrelation functions for the realized measures of volatility computed with high frequency returns on INTC (Intel)
Figure 2: The figure reveals the speed by which a conventional GARCH model can adjust its model-implied volatil- volatil-ity after a sudden jump in volatilvolatil-ity

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