meatGmm-methods {momentfit} | R Documentation |
~~ Methods for Function meatGmm
in Package momentfit ~~
Description
It computes the meat in the sandwich representation of the covariance matrix of the GMM estimator.
Usage
## S4 method for signature 'gmmfit'
meatGmm(object, robust=FALSE)
## S4 method for signature 'sgmmfit'
meatGmm(object, robust=FALSE)
## S4 method for signature 'tsls'
meatGmm(object, robust=FALSE)
Arguments
object |
GMM fit object |
robust |
If |
Details
If robust=FALSE
, then the meat is G'V^{-1}G
, where
G
and V
are respectively the sample mean of the derivatives
and the covariance matrix of the moment conditions. If it is
TRUE
, the meat is G'WVWG
, where W
is the weighting
matrix.
For tsls
objects, the function makes use of the QR representation
of the weighting matrix. It is simply possible to get the meat in a more
stable way. In that case, W=(\sigma^2Z'Z/n)^{-1}
. If robust
is FALSE, V
is assumed to be \sigma^2Z'Z/n
which is the
inverse of the bread
. Therefore, a sandwich covariance matrix
with robust=FALSE
will result in a non-sandwich matrix.
For sgmmfit
, the covariance is for the vectorized coefficient
vector of all equations.
Methods
signature(object = "gmmfit")
-
General GMM fit.
signature(object = "tsls")
-
For model estimated by two-stage least squares.
signature(object = "sgmmfit")
-
For system of equations.
Examples
data(simData)
theta <- c(beta0=1,beta1=2)
model1 <- momentModel(y~x1, ~z1+z2, data=simData)
res <- gmmFit(model1)
meatGmm(res)
## It is a slightly different because the weighting matrix
## is computed using the first step estimate and the covariance
## matrix of the moment conditions is based on the final estimate.
## They should, however, be asymptotically equivalent.
meatGmm(res, robust=TRUE)
## TSLS
res2 <- tsls(model1)
## Robust meat
meatGmm(res2, TRUE)
## It makes no difference is the model is assumed iid
model2 <- momentModel(y~x1, ~z1+z2, data=simData, vcov="iid")
res2 <- tsls(model2)
meatGmm(res2, FALSE)
meatGmm(res2, TRUE)