SemiParBIVProbit-package: Semiparametric Bivariate Probit Modelling
Description
SemiParBIVProbit
provides a function for bivariate probit modelling with semiparametric
predictors, including linear, nonlinear and random effects.Details
SemiParBIVProbit
provides a function for flexible bivariate probit modelling, in the presence of
correlated error equations, endogeneity or non-random sample selection. The underlying representation and
estimation of the model is based on a penalized regression spline approach, with automatic smoothness selection. The
numerical routine carries out function minimization using a trust region algorithm from the package trust
in combination with
an adaptation of a low level smoothness selection fitting procedure from the package mgcv
.
SemiParBIVProbit
supports the use of many smoothers as extracted from mgcv
. Scale invariant tensor product smooths
are not currently supported. Estimation is by penalized maximum likelihood with automatic smoothness selection achieved
by using the approximate Un-Biased Risk Estimator (UBRE).
Confidence intervals for smooth components are derived using a Bayesian approach. Approximate p-values for testing
individual smooth terms for equality to the zero function are also provided. Functions plot.SemiParBIVProbit
and
summary.SemiParBIVProbit
extract such information from a fitted SemiParBIVProbitObject
. Model/variable
selection is also possible via the use of shrinakge smoothers or information criteria.
The use of parametric or nonparametric random effects is also allowed for.References
Marra G., Papageorgiou G. and Radice R. (in press), Estimation of a Semiparametric Recursive Bivariate Probit Model with Nonparametric Mixing. Australian & New Zealand Journal of Statistics.
Marra G. and Radice R. (2011), Estimation of a Semiparametric Recursive Bivariate Probit in the Presence of Endogeneity. Canadian Journal of Statistics, 39(2), 259-279.
Marra G. and Radice R. (submitted), A Penalized Likelihood Estimation Approach to Semiparametric Sample Selection Binary Response Modeling. Electronic Journal of Statistics, invited revision.