Description Usage Arguments Details Value Author(s) See Also Examples
This function controls the arguments to be passed to optim
and optimize
for LQMM estimation.
1 2 | lqmm.fit.df(theta_0, x, y, z, weights, cov_name, V, W, sigma_0,
tau, group, control)
|
theta_0 |
starting values for the linear predictor. |
x |
the model matrix for fixed effects (see details). |
y |
the model response (see details). |
z |
the model matrix for random effects (see details). |
weights |
the weights used in the fitting process (see details). |
cov_name |
variance–covariance matrix of the random effects. Default is |
V |
nodes of the quadrature. |
W |
weights of the quadrature. |
sigma_0 |
starting value for the scale parameter. |
tau |
the quantile(s) to be estimated. |
group |
the grouping factor (see details). |
control |
list of control parameters used for optimization (see |
In lqmm
, see argument fit
for generating a list of arguments to be called by this function; see argument covariance
for alternative variance–covariance matrices.
NOTE: the data should be ordered by group
when passed to lqmm.fit.df
(such ordering is performed by lqmm
).
An object of class "list" containing the following components:
theta |
a vector of coefficients, including the "raw" variance–covariance parameters (see |
scale |
the scale parameter. |
logLik |
the log–likelihood. |
opt |
number of iterations when the estimation algorithm stopped for lower (theta) and upper (scale) loop. |
.
Marco Geraci
1 2 3 4 5 6 7 8 9 10 |
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