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səhifə | 16/23 | tarix | 01.05.2023 | ölçüsü | 0,79 Mb. | | #105443 |
| Ch9 slides
The Models - ‘Introductory Econometrics for Finance’ © Chris Brooks 2013
- The “Base” Models
- For the conditional mean
- (1)
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- And for the variance (2)
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- or (3)
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- where
- RMt denotes the return on the market portfolio
- RFt denotes the risk-free rate
- ht denotes the conditional variance from the GARCH-type models while t2 denotes the implied variance from option prices.
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The Models (cont’d) - ‘Introductory Econometrics for Finance’ © Chris Brooks 2013
- Add in a lagged value of the implied volatility parameter to equations (2) and (3).
- (2) becomes
- (4)
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- and (3) becomes
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- (5)
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- We are interested in testing H0 : = 0 in (4) or (5).
- Also, we want to test H0 : 1 = 0 and 1 = 0 in (4),
- and H0 : 1 = 0 and 1 = 0 and = 0 and = 0 in (5).
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The Models (cont’d) - ‘Introductory Econometrics for Finance’ © Chris Brooks 2013
- If this second set of restrictions holds, then (4) & (5) collapse to
- (4’)
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- and (3) becomes
- (5’)
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- We can test all of these restrictions using a likelihood ratio test.
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- ‘Introductory Econometrics for Finance’ © Chris Brooks 2013
In-sample Likelihood Ratio Test Results: EGARCH Versus Implied Volatility - ‘Introductory Econometrics for Finance’ © Chris Brooks 2013
- ‘Introductory Econometrics for Finance’ © Chris Brooks 2013
- IV has extra incremental power for modelling stock volatility beyond GARCH.
- But the models do not represent a true test of the predictive ability of IV.
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- So the authors conduct an out of sample forecasting test.
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- There are 729 data points. They use the first 410 to estimate the models, and then make a 1-step ahead forecast of the following week’s volatility.
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- Then they roll the sample forward one observation at a time, constructing a new one step ahead forecast at each step.
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