Hybrid gmm estimator after selecting IVs in the reduced form equation.
naive.gmm(
g,
x,
z,
max.degree = 10,
criterion = c("BIC", "AIC", "GCV", "AICc", "EBIC"),
df.method = c("default", "active"),
penalty = c("grLasso", "grMCP", "grSCAD", "gel", "cMCP"),
endogenous.index = c(),
IV.intercept = FALSE,
family = c("gaussian", "binomial", "poisson"),
...
)
A function of the form \(g(\theta,x)\) and which returns a \(n \times q\) matrix with typical element \(g_i(\theta,x_t)\) for \(i=1,...q\) and \(t=1,...,n\). This matrix is then used to build the q sample moment conditions. It can also be a formula if the model is linear (see details gmm).
The design matrix, without an intercept.
The instrument variables matrix.
The upper limit value of degree of B-splines when using BIC/AIC to choose the tuning parameters, default is BIC.
The criterion by which to select the regularization parameter. One of "AIC", "BIC", "GCV", "AICc","EBIC", default is "BIC".
How should effective model parameters be calculated? One of: "active", which counts the number of nonzero coefficients; or "default", which uses the calculated df returned by grpreg, default is "default".
The penalty to be applied to the model. For group selection, one of grLasso, grMCP, or grSCAD. For bi-level selection, one of gel or cMCP, default is " grLasso".
Specify which variables in design matrix are endogenous variables, the variable corresponds to the value 1 is endogenous variables, the variable corresponds to the value 0 is exogenous variable, the default is all endogenous variables.
Intercept of instrument variables, default is <U+201C>FALSE<U+201D>.
Either "gaussian" or "binomial", depending on the response.default is " gaussian ".
Arguments passed to gmm (such as type,kernel...,detail see gmm).
An object of type naive.gmm
which is a list with the following
components:
Degree of B-splines.
The criterion by which to select the regularization parameter. One of "AIC", "BIC", "GCV", "AICc","EBIC", default is "BIC".
The index of selected instrument variables.
The index of selected instrument variables after B-splines.
Gmm object, detail see gmm.
See naivereg and gmm.
Q. Fan and W. Zhong (2018), <U+201C>Nonparametric Additive Instrumental Variable Estimator: A Group Shrinkage Estimation Perspective,<U+201D> Journal of Business & Economic Statistics, doi: 10.1080/07350015.2016.1180991.
Caner, M. and Fan, Q. (2015), Hybrid GEL Estimators: Instrument Selection with Adaptive Lasso, Journal of Econometrics, Volume 187, 256<U+2013>274.
# NOT RUN {
# gmm estimation after IV selection
data("naivedata")
x=naivedata[,1]
y=naivedata[,2]
z=naivedata[,3:22]
naive.gmm(y~x+x^2,cbind(x,x^2),z)
# }
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