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GARCH in mean Structural Break in volatility Seasonality Non-normality Control for Volatility Proxies Stochastic Volatility Summary
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GARCH in mean Structural Break in volatility Seasonality Non-normality Control for Volatility Proxies Stochastic Volatility Summary
Financial Econometrics
Slides-13: Remainaing Issues for GARCH and Alternative
School of Economics1
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notice must not be removed from this material.
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GARCH in mean Structural Break in volatility Seasonality Non-normality Control for Volatility Proxies Stochastic Volatility Summary
Lecture Plan
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• Measure the risk premium e↵ect: GARCH-M model
• Deal with structural break in volatility
• Seasonality and distributional assumptions
• Inclusion of other volatility measures
• SV models
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GARCH in mean Structural Break in volatility Seasonality Non-normality Control for Volatility Proxies Stochastic Volatility Summary
GARCH in mean
I Risk premium e↵ect: investing in a riskier asset should be rewarded by a
higher expected return.
I In the context of a market index: investing in a riskier (more volatile)
period should be rewarded by a higher expected return.
⌅ In AR(1)-GARCH, the mean equation yt = c+ �yt�1 + µt: implies
the expected return = yt = c+ �yt�1, which is unrelated to the
volatility or risk measure �t.
⌅ Motivation: investors should be rewarded for taking additional risk
by obtaining a higher return
I GARCH-M is used to account for the risk premium
yt = c+ ��t�1 + µt µt|⌦t�1 ⇠ N(0,�2t )
t = ↵0 + ↵1µ
where � measures the risk premium e↵ect.
(See Lundblad (2007, JFE, p123-150) among others.)
Slides-13 UNSW
GARCH in mean Structural Break in volatility Seasonality Non-normality Control for Volatility Proxies Stochastic Volatility Summary
eg. NYSE composite return No evidence for the “risk premium” e↵ect in any
of GARCH(1,1), TGARCH/GJR and EGARCH.
Slides-13 UNSW
GARCH in mean Structural Break in volatility Seasonality Non-normality Control for Volatility Proxies Stochastic Volatility Summary
Structural break in Volatility
• The composite return series appears to have a change in its volatility
• The change is permanent.
• If ignored, it can result in
– over-estimating the persistence measure (↵1 + �1);
– making the unconditional variance estimate inconsistent;
– reducing the quality of forecasts, and VaR.
• Important to detect and account for the structural break.
Topic 6. GARCH Extensions
• Structural break in volatility
– Break in volatility
• The composite return series
appears to have a change
in its volatility level.
• The change is permanent.
If ignored, it can result in
– over-estimating the persistence measure (𝛼𝛼1 + 𝛽𝛽1);
– making the unconditional variance estimate inconsistent;
– reducing the quality of forecasts, and VaR.
• Important to detect and account for the structural
School of Economics, UNSW Slides-09, Financial Econometrics 19
1996 1998 2000 2002
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GARCH in mean Structural Break in volatility Seasonality Non-normality Control for Volatility Proxies Stochastic Volatility Summary
Test for structural break
I As the variance is closely related to squared returns, we may check the
break in an AR model for the squared returns, using the CUSUM test.
I Model stability: Its structure changes over time?:
• Recursive parameter estimates. Monitor changes in parameter
estimates over time.
{y1, · · · , y⌧}, {y1, · · · , y⌧+1}, · · · , {y1, · · · , yT }
�̂(⌧), �̂(⌧ + 1), �̂(T )
• Recursive residuals: e⌧+1|⌧ = y⌧+1 �X⌧+1�̂(⌧)
{y1, · · · , y⌧}, {y1, · · · , y⌧+1}, · · · , {y1, · · · , y⌧}
e⌧+1|⌧ , e⌧+2|⌧+1, eT |T�1
• If the model is stable/correct: w⌧+1|⌧ =
se(e⌧+1|⌧ )
Slides-13 UNSW
GARCH in mean Structural Break in volatility Seasonality Non-normality Control for Volatility Proxies Stochastic Volatility Summary
Model stability test: CUSUM
CUSUM test (cumulative sum of standardised recursive residuals)
w⌧+1|⌧ , t = K + 1,K + 2, · · · , T � 1
Reject stability if it goes outside the 95% bands.
Eviews: View/Stability Tests/Recursive Estimates after a linear regression is
Test in volatility break: eg. AR(5) for the composite return squared:
t = a0 + a1r
t�1 + · · ·+ a5r
t�5 + errort
CUSUM test rejects the null hypothesis of no break.
Topic 6. GARCH Extensions
• Structural break in volatility
– Test for a break in volatility
• As the variance is closely related to squared returns, we
may check the break in an AR model for the squared
returns, using the CUSUM test.
eg. AR(5) for the composite return squared:
𝑟𝑟𝑡𝑡2 = 𝑎𝑎0 + 𝑎𝑎1𝑟𝑟𝑡𝑡−1
2 +⋯+ 𝑎𝑎5𝑟𝑟𝑡𝑡−5
2 + error𝑡𝑡
CUSUM test rejects the null
hypothesis of no break.
School of Economics, UNSW Slides-09, Financial Econometrics 20
250 500 750 1000 1250 1500 1750
CUSUM 5% Significance
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GARCH in mean Structural Break in volatility Seasonality Non-normality Control for Volatility Proxies Stochastic Volatility Summary
Structural break in volatility
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Find the break point
Topic 6. GARCH Extensions
• Structural break in volatility
– Find the break point
1) Run the restricted regression (no break) and save the log
likelihood as ℓ0.
2) Set 𝜏𝜏 = .15𝑇𝑇 (15% trim). Define the break dummy as 𝐵𝐵𝑡𝑡,𝜏𝜏, which
is 0 for 𝑡𝑡 < 𝜏𝜏 and 1 for 𝑡𝑡 ≥ 𝜏𝜏.
3) Run the unrestricted regression
𝑟𝑟𝑡𝑡2 = 𝑎𝑎0 + 𝑎𝑎1𝑟𝑟𝑡𝑡−1
2 +⋯+ 𝑎𝑎5𝑟𝑟𝑡𝑡−5
2 + 𝜓𝜓𝐵𝐵𝑡𝑡,𝜏𝜏 + error𝑡𝑡
and save the log likelihood ℓ𝜏𝜏 and 𝐿𝐿𝑅𝑅𝜏𝜏 = 2(ℓ𝜏𝜏 − ℓ0).
4) Set 𝜏𝜏 = 𝜏𝜏 + 1. If 𝜏𝜏 ≤ .85𝑇𝑇 (15% trim), go to 3).
Otherwise go to 5).
5) The break point is estimated as the 𝜏𝜏 associated with the
greatest 𝐿𝐿𝑅𝑅𝜏𝜏.
It could be used as a test: the null of no break is rejected if max LR > cv.
The cv for 15% trim is 8.85, see Andrews (1993, Etrca, p821-856).
School of Economics, UNSW Slides-09, Financial Econometrics 21
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GARCH in mean Structural Break in volatility Seasonality Non-normality Control for Volatility Proxies Stochastic Volatility Summary
Structural break in volatility
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Find the break point
eg. AR(5) for the composite return squared:
r2t = a0 + a1r
t�1 + · · ·+ a5r
t�5 + Bt,⌧ + errort
Topic 6. GARCH Extensions
• Structural break in volatility
– Find the break point
eg. AR(5) for the composite return squared:
𝑟𝑟𝑡𝑡2 = 𝑎𝑎0 + 𝑎𝑎1𝑟𝑟𝑡𝑡−1
2 +⋯+ 𝑎𝑎5𝑟𝑟𝑡𝑡−5
2 + 𝜓𝜓𝐵𝐵𝑡𝑡,𝜏𝜏 + error𝑡𝑡
The break point = 566.
AR(5) with the break passes the CUSUM test
School of Economics, UNSW Slides-09, Financial Econometrics 22
250 500 750 1000 1250 1500 1750
750 1000 1250 1500 1750
CUSUM 5% Significance
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GARCH in mean Structural Break in volatility Seasonality Non-normality Control for Volatility Proxies Stochastic Volatility Summary
Break in volatility models
Incorporating breaks in volatility models
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Incorporate a break in GARCH
I Once the break point is known and the break dummy Bt,⌧ is defined, the
break should be included in the conditional variance.
I GARCH(1,1) :
�2t = ↵0 + ↵1µ
t�1 + Bt,⌧
I TGARCH/GJR :
�2t = ↵0 + ↵1µ
t�1It�1 + �1�
t�1 + Bt,⌧
I TGARCH/GJR :
ln(�2t ) = ↵0 + ↵1|⌫t�1|+ �⌫t�1 + �1ln(�2t�1) + Bt,⌧
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GARCH in mean Structural Break in volatility Seasonality Non-normality Control for Volatility Proxies Stochastic Volatility Summary
Seasonality: January E↵ect
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⌅ Including a dummy in the variance equation,
• GARCH(1,1):
�2t = ↵0 + ↵1µ
�2t = ↵0 + ↵1µ
t�1It�1 + �1�
• EGARCH: ln(�2t ) = ↵0 + ↵1|⌫t�1|+ �⌫t�1 + �1ln(�2t�1) + �Jt
where Jt is 1 if t is in January and 0 otherwise.
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GARCH in mean Structural Break in volatility Seasonality Non-normality Control for Volatility Proxies Stochastic Volatility Summary
Non-normality
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⌅ Normality alternatives
• In our examples, normality is usually rejected owing to
– heavy tails (Kurtosis> 3) and
– negative skewness
in the distribution of the standardised shock ⌫t.
• Alternative distributions may be assumed
– Student’s t: t(n)
with heavy tails but symmetry.
t(n) ⇡ N(0, 1) when the df n ! 1
– Mixture distributions: heavy tails and asymmetry.
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GARCH in mean Structural Break in volatility Seasonality Non-normality Control for Volatility Proxies Stochastic Volatility Summary
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GARCH in mean Structural Break in volatility Seasonality Non-normality Control for Volatility Proxies Stochastic Volatility Summary
Mixture of two normals
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GARCH in mean Structural Break in volatility Seasonality Non-normality Control for Volatility Proxies Stochastic Volatility Summary
Mixture of gaussians
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GARCH in mean Structural Break in volatility Seasonality Non-normality Control for Volatility Proxies Stochastic Volatility Summary
Incorporate other volatility measures
⌅ Range and implied volatility
• In addition to µt�1 or ⌫t�1, other volatility measures may have predictive
power for conditional variance.
Typically, the range (100ln(high/low)) and implied volatility (IV) are
informative measures of volatility.
• For EGARCH, we may specify
ln(�2t ) = ↵0 + ↵1|⌫t�1|+ �⌫t�1 + �1ln(�2t�1) + a1rngt�1 + a2ivt�1,
where the range (rng) and IV (iv) are included.
! It is good for 1-step ahead forecast. However, we need models for the
range and IV to do multi-step ahead forecasts.
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GARCH in mean Structural Break in volatility Seasonality Non-normality Control for Volatility Proxies Stochastic Volatility Summary
Example: Range and Implied Volatility in EGARCH
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GARCH in mean Structural Break in volatility Seasonality Non-normality Control for Volatility Proxies Stochastic Volatility Summary
Stochastic volatility (SV) model: Latent Volatility
• In GARCH type models, the shock µt�1 or ⌫t�1 can be recovered
from the mean equation. The conditional variance, as a function of
µt�1 is ”observable”.
yt = µ+ �t⌫t,
ln(�2t ) = ↵0 + �1ln(�
t�1) + ⌘t, ⌘t ⇠ iid N(0,!
the conditional variance �2t is latent (unobservable):
• there are two shocks: ⌫t and ⌘t. Often used in theoretical options
pricing literature;
• it is di�cult to estimate (likelihood evaluation is challenging)
• it is awkward for forecasting, as �2t is conditional on an unobservable
information set.
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GARCH in mean Structural Break in volatility Seasonality Non-normality Control for Volatility Proxies Stochastic Volatility Summary
• We have seen a variety of models for conditional volatility for
niveriate returns models
• Next… Multivariate Volatility models: Portfolio management,
hedging strategies…
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