feglm.nb | R Documentation |
feglm.nb
can be used to fit negative binomial generalized linear models with many
high-dimensional fixed effects (see feglm
).
feglm.nb( formula = NULL, data = NULL, weights = NULL, beta.start = NULL, eta.start = NULL, init.theta = NULL, link = c("log", "identity", "sqrt"), control = NULL )
formula, data, weights, beta.start, eta.start, control |
see |
init.theta |
an optional initial value for the theta parameter (see |
link |
the link function. Must be one of |
If feglm.nb
does not converge this is usually a sign of linear dependence between one or
more regressors and a fixed effects category. In this case, you should carefully inspect your
model specification.
The function feglm.nb
returns a named list of class "feglm"
.
Gaure, S. (2013). "OLS with Multiple High Dimensional Category Variables". Computational Statistics and Data Analysis. 66.
Marschner, I. (2011). "glm2: Fitting generalized linear models with convergence problems". The R Journal, 3(2).
Stammann, A., F. Heiss, and D. McFadden (2016). "Estimating Fixed Effects Logit Models with Large Panel Data". Working paper.
Stammann, A. (2018). "Fast and Feasible Estimation of Generalized Linear Models with High-Dimensional k-Way Fixed Effects". ArXiv e-prints.
glm.nb
, feglm
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