Specify EGARCH Models
Default EGARCH Model
The default EGARCH(,) model in Econometrics Toolbox™ has the form
,
with Gaussian innovation distribution and
.
The default model has no mean offset, and the lagged log variances and standardized innovations are at consecutive lags. For more details on EGARCH models, see What Is an EGARCH Model?
You can specify a model of this form using the shorthand syntax egarch(P,Q)
. For the input arguments P
and Q
, enter the number of lagged conditional variances (GARCH terms), , and lagged squared innovations (ARCH and leverage terms), , respectively. The following restrictions apply:
and must be nonnegative integers.
If , you must also specify .
When you use this shorthand syntax, egarch
creates a egarch
model object with these default property values.
Property | Default Value |
---|---|
| Number of GARCH terms |
| Number of ARCH and leverage terms |
|
|
|
|
| Cell vector of |
| Cell vector of |
| Cell vector of |
|
|
To assign nondefault values to any properties, you can modify the created model using dot notation.
For example, use egarch
to create the EGARCH(1,1) model
,
with Gaussian innovation distribution and
.
Mdl = egarch(1,1)
Mdl = egarch with properties: Description: "EGARCH(1,1) Conditional Variance Model (Gaussian Distribution)" SeriesName: "Y" Distribution: Name = "Gaussian" P: 1 Q: 1 Constant: NaN GARCH: {NaN} at lag [1] ARCH: {NaN} at lag [1] Leverage: {NaN} at lag [1] Offset: 0
The returned model Mdl
has NaN
s for all model parameters. A NaN
value signals to object functions, such as estimate
, that a parameter needs to be estimated or otherwise specified by you. You must specify all parameters to, for example, forecast or simulate the model using forecast
or simulate
.
To estimate parameters, input the model and data to the estimate
function. This function returns a fitted egarch
model object. The properties of the fitted model contain parameter estimates for the corresponding NaN
values of the input model.
When you call egarch
without specifying input arguments, egarch
returns a GARCH(0,0) model object containing default property values. Inspect the default values of a default egarch
model object.
DefaultMdl = egarch
DefaultMdl = egarch with properties: Description: "EGARCH(0,0) Conditional Variance Model (Gaussian Distribution)" SeriesName: "Y" Distribution: Name = "Gaussian" P: 0 Q: 0 Constant: NaN GARCH: {} ARCH: {} Leverage: {} Offset: 0
Create EGARCH Model By Using Shorthand Syntax
Use the shorthand egarch(P,Q)
syntax to create the EGARCH(1,1) model
,
with a Gaussian innovation distribution and
Mdl = egarch(1,1)
Mdl = egarch with properties: Description: "EGARCH(1,1) Conditional Variance Model (Gaussian Distribution)" SeriesName: "Y" Distribution: Name = "Gaussian" P: 1 Q: 1 Constant: NaN GARCH: {NaN} at lag [1] ARCH: {NaN} at lag [1] Leverage: {NaN} at lag [1] Offset: 0
The output shows that the model Mdl
has NaN
values for these model parameters:
Constant
— the conditional variance model constant termGARCH
— the lag 1 GARCH coefficientARCH
— the lag 1 ARCH coefficientLeverage
— the lag 1 leverage coefficient
The default innovation model offset, specified by Offset
, is 0
.
You can modify the model by using dot notation or by passing it and data to the estimate
function.
Using Name-Value Arguments
The most flexible way to specify EGARCH models is using name-value arguments. You
do not need, nor are you able, to specify a value for every model property.
egarch
assigns default values to any model properties you do
not (or cannot) specify.
The general EGARCH(P,Q) model is of the form
where and
The innovation distribution can be Gaussian or Student’s t. The default distribution is Gaussian.
In order to estimate, forecast, or simulate a model, you must specify the
parametric form of the model (for example, which lags correspond to nonzero
coefficients, the innovation distribution) and any known parameter values. You can
set any unknown parameters equal to NaN
, and then input the model
to estimate
(along with data) to get estimated parameter
values.
egarch
(and estimate
) returns a model corresponding to the model specification. You can modify models to change or update the specification. Input models (with no NaN
values) to forecast
or simulate
for forecasting and simulation, respectively. Here are some example specifications using name-value arguments.
Model | Specification |
---|---|
| egarch('GARCH',NaN,'ARCH',NaN,... or egarch(1,1) |
| egarch('Offset',NaN,'GARCH',NaN,... |
| egarch('Constant',-0.1,'GARCH',0.4,... |
Here is a full description of the name-value arguments you can use to specify EGARCH models.
Note
You cannot assign values to the properties P
and Q
. egarch
sets P
equal to the largest GARCH lag, and Q
equal to the largest lag with a nonzero standardized innovation coefficient, including ARCH and leverage coefficients.
Name-Value Arguments for EGARCH Models
Name | Corresponding EGARCH Model Term(s) | When to Specify |
---|---|---|
Offset | Mean offset, μ | To include a nonzero mean offset. For example, 'Offset',0.2 . If you plan to estimate the offset term, specify 'Offset',NaN .By default, Offset has value 0 (meaning, no offset). |
Constant | Constant in the conditional variance model, κ | To set equality constraints for κ. For example, if a model has known constant –0.1, specify 'Constant',-0.1 .By default, Constant has value NaN . |
GARCH | GARCH coefficients, | To set equality constraints for the GARCH coefficients. For example, to specify an EGARCH(1,1) model with specify 'GARCH',0.6 .You only need to specify the nonzero elements of GARCH . If the nonzero coefficients are at nonconsecutive lags, specify the corresponding lags using GARCHLags .Any coefficients you specify must satisfy all stationarity constraints. |
GARCHLags | Lags corresponding to nonzero GARCH coefficients | GARCHLags is not a model property.Use this argument as a shortcut for specifying GARCH when the nonzero GARCH coefficients correspond to nonconsecutive lags. For example, to specify nonzero GARCH coefficients at lags 1 and 3, e.g., nonzero and specify 'GARCHLags',[1,3] .Use GARCH and GARCHLags together to specify known nonzero GARCH coefficients at nonconsecutive lags. For example, if and specify 'GARCH',{0.3,0.1},'GARCHLags',[1,3] |
ARCH | ARCH coefficients, | To set equality constraints for the ARCH coefficients. For example, to specify an EGARCH(1,1) model with specify 'ARCH',0.3 .You only need to specify the nonzero elements of ARCH . If the nonzero coefficients are at nonconsecutive lags, specify the corresponding lags using ARCHLags . |
ARCHLags | Lags corresponding to nonzero ARCH coefficients |
Use this argument as a shortcut for specifying Use |
Leverage | Leverage coefficients, | To set equality constraints for the leverage coefficients. For example, to specify an EGARCH(1,1) model with specify 'Leverage',-0.1 .You only need to specify the nonzero elements of Leverage . If the nonzero coefficients are at nonconsecutive lags, specify the corresponding lags using LeverageLags . |
LeverageLags | Lags corresponding to nonzero leverage coefficients |
Use this argument as a shortcut for specifying Use |
Distribution | Distribution of the innovation process | Use this argument to specify a Student’s t innovation distribution. By default, the innovation distribution is Gaussian. For example, to specify a t distribution with unknown degrees of freedom, specify To specify a t innovation distribution with known degrees of freedom, assign |
Specify EGARCH Model Using Econometric Modeler App
You can specify the lag structure, innovation distribution, and leverages of EGARCH models using the Econometric Modeler app. The app treats all coefficients as unknown and estimable, including the degrees of freedom parameter for a t innovation distribution.
At the command line, open the Econometric Modeler app.
econometricModeler
Alternatively, open the app from the apps gallery (see Econometric Modeler).
In the app, you can see all supported models by selecting a time series variable for the response in the Time Series pane. Then, on the Econometric Modeler tab, in the Models section, click the arrow to display the models gallery.
The GARCH Models section contains all supported conditional variance models. To specify an EGARCH model, click EGARCH
. The EGARCH Model Parameters dialog box appears.
Adjustable parameters include:
GARCH Degree – The order of the GARCH polynomial.
ARCH Degree – The order of the ARCH polynomial. The value of this parameter also specifies the order of the leverage polynomial.
Include Offset – The inclusion of a model offset.
Innovation Distribution – The innovation distribution.
As you adjust parameter values, the equation in the Model Equation section changes to match your specifications. Adjustable parameters correspond to input and name-value pair arguments described in the previous sections and in the egarch
reference page.
For more details on specifying models using the app, see Fitting Models to Data and Specifying Univariate Lag Operator Polynomials Interactively.
Specify EGARCH Model with Mean Offset
This example shows how to specify an EGARCH(P, Q) model with a mean offset. Use name-value pair arguments to specify a model that differs from the default model.
Specify an EGARCH(1,1) model with a mean offset,
where and
Mdl = egarch('Offset',NaN,'GARCHLags',1,'ARCHLags',1,... 'LeverageLags',1)
Mdl = egarch with properties: Description: "EGARCH(1,1) Conditional Variance Model with Offset (Gaussian Distribution)" SeriesName: "Y" Distribution: Name = "Gaussian" P: 1 Q: 1 Constant: NaN GARCH: {NaN} at lag [1] ARCH: {NaN} at lag [1] Leverage: {NaN} at lag [1] Offset: NaN
The mean offset appears in the output as an additional parameter to be estimated or otherwise specified.
Specify EGARCH Model with Nonconsecutive Lags
This example shows how to specify an EGARCH model with nonzero coefficients at nonconsecutive lags.
Specify an EGARCH(3,1) model with nonzero GARCH terms at lags 1 and 3. Include a mean offset.
Mdl = egarch('Offset',NaN,'GARCHLags',[1,3],'ARCHLags',1,... 'LeverageLags',1)
Mdl = egarch with properties: Description: "EGARCH(3,1) Conditional Variance Model with Offset (Gaussian Distribution)" SeriesName: "Y" Distribution: Name = "Gaussian" P: 3 Q: 1 Constant: NaN GARCH: {NaN NaN} at lags [1 3] ARCH: {NaN} at lag [1] Leverage: {NaN} at lag [1] Offset: NaN
The unknown nonzero GARCH coefficients correspond to lagged log variances at lags 1 and 3. The output shows only the nonzero coefficients.
Display the value of GARCH
:
Mdl.GARCH
ans=1×3 cell array
{[NaN]} {[0]} {[NaN]}
The GARCH
cell array returns three elements. The first and third elements have value NaN
, indicating these coefficients are nonzero and need to be estimated or otherwise specified. By default, egarch
sets the interim coefficient at lag 2 equal to zero to maintain consistency with MATLAB® cell array indexing.
Specify EGARCH Model with Known Parameter Values
This example shows how to specify an EGARCH model with known parameter values. You can use such a fully specified model as an input to simulate
or forecast
.
Specify the EGARCH(1,1) model
with a Gaussian innovation distribution.
Mdl = egarch('Constant',0.1,'GARCH',0.6,'ARCH',0.2,... 'Leverage',-0.1)
Mdl = egarch with properties: Description: "EGARCH(1,1) Conditional Variance Model (Gaussian Distribution)" SeriesName: "Y" Distribution: Name = "Gaussian" P: 1 Q: 1 Constant: 0.1 GARCH: {0.6} at lag [1] ARCH: {0.2} at lag [1] Leverage: {-0.1} at lag [1] Offset: 0
Because all parameter values are specified, the created model has no NaN
values. The functions simulate
and forecast
don't accept input models with NaN
values.
Specify EGARCH Model with t Innovation Distribution
This example shows how to specify an EGARCH model with a Student's t innovation distribution.
Specify an EGARCH(1,1) model with a mean offset,
where and
Assume follows a Student's t innovation distribution with 10 degrees of freedom.
tDist = struct('Name','t','DoF',10); Mdl = egarch('Offset',NaN,'GARCHLags',1,'ARCHLags',1,... 'LeverageLags',1,'Distribution',tDist)
Mdl = egarch with properties: Description: "EGARCH(1,1) Conditional Variance Model with Offset (t Distribution)" SeriesName: "Y" Distribution: Name = "t", DoF = 10 P: 1 Q: 1 Constant: NaN GARCH: {NaN} at lag [1] ARCH: {NaN} at lag [1] Leverage: {NaN} at lag [1] Offset: NaN
The value of Distribution
is a struct
array with field Name
equal to 't'
and field DoF
equal to 10
. When you specify the degrees of freedom, they aren't estimated if you input the model to estimate
.
What Is an EGARCH Model?
An exponential generalized autoregressive conditional heteroscedastic (EGARCH) model is a type of conditional variance model, a dynamic model that addresses conditional heteroscedasticity, or volatility clustering, in an innovations process εt. Volatility clustering occurs when an innovations process does not exhibit significant autocorrelation, but the variance of the innovations process changes with time and exhibits autocorrelation.
An EGARCH model posits that the current conditional variance is the sum of these linear processes:
Past logged conditional variances (the GARCH component or polynomial)
Magnitudes of past standardized innovations (the ARCH component or polynomial)
Past standardized innovations (the leverage component or polynomial)
Conditional Variance Model
Consider the time series
where . Here, zt is an independent and identically distributed series of standardized random variables (Econometrics Toolbox™ supports standardized Gaussian and standardized Student’s t innovation distributions). The constant term, , is a mean offset.
A conditional variance model specifies the dynamic evolution of the innovation variance,
where Ht–1 is the history of the process. The history includes:
Past variances,
Past innovations,
Conditional variance models are appropriate for time series that do not exhibit significant autocorrelation, but are serially dependent. The innovation series is uncorrelated, because:
E(εt) = 0.
E(εtεt–h) = 0 for all t and
However, if depends on , for example, then εt depends on εt–1, even though they are uncorrelated. This kind of dependence exhibits itself as autocorrelation in the squared innovation series,
EGARCH Model
The EGARCH model is a GARCH variant that models the logarithm of the conditional variance process. In addition to modeling the logarithm, the EGARCH model has additional leverage terms to capture asymmetry in volatility clustering.
The EGARCH(P,Q) model has P GARCH coefficients associated with lagged log variance terms, Q ARCH coefficients associated with the magnitude of lagged standardized innovations, and Q leverage coefficients associated with signed, lagged standardized innovations. The form of the EGARCH(P,Q) model in Econometrics Toolbox is
where and
The form of the expected value terms associated with ARCH coefficients in the EGARCH equation depends on the distribution of zt:
If the innovation distribution is Gaussian, then
If the innovation distribution is Student’s t with ν > 2 degrees of freedom, then
The toolbox treats the EGARCH(P,Q) model as an ARMA model for Thus, to ensure stationarity, all roots of the GARCH coefficient polynomial,, must lie outside the unit circle.
The EGARCH model is unique from the GARCH and GJR models because it models the logarithm of the variance. By modeling the logarithm, positivity constraints on the model parameters are relaxed. However, forecasts of conditional variances from an EGARCH model are biased, because by Jensen’s inequality,
An EGARCH(1,1) specification is complex enough for most applications. For an EGARCH(1,1) model, the GARCH and ARCH coefficients are expected to be positive, and the leverage coefficient is expected to be negative; large unanticipated downward shocks should increase the variance. If you get signs opposite to those expected, you might encounter difficulties inferring volatility sequences and forecasting (a negative ARCH coefficient can be particularly problematic). In this case, an EGARCH model might not be the best choice for your application.