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Published byJustina McCarthy Modified over 9 years ago
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THE EXPONENTIAL GARCH MODEL
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To allow for asymmetric effects between positive and negative asset returns, he considers the weighted innovation where θ and γ are real constants Both t and | t | − E(| t |) are zero-mean iid sequences with continuous distributions
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Therefore E[g( t )] = 0 The asymmetry of g( t ) can easily be seen by rewriting it as
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An EGARCH(m, s) model can be written as where α 0 is a constant B is the back-shift (or lag) operator such that Bg( t ) =g( t−1 )
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The use of g( t ) enables the model to respond asymmetrically to positive and negative lagged values of a t
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To better understand the EGARCH model, let us consider the simple model with order (1, 0)
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Specifically, we have
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Example We consider the monthly log returns of IBM stock from January 1926 to December 1997 for 864 observations. An AR(1)-EGARCH(1, 0) model is entertained and the fitted model is
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For the 2-step ahead forecast
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