bprobgHsSS: Internal Function

Description Author(s)

View source: R/bprobgHsSS.r

Description

It provides the log-likelihood, gradient and observed/Fisher information matrix for penalized/unpenalized maximum likelihood optimization when copula sample selection models with binary outcomes are employed.

Author(s)

Maintainer: Giampiero Marra giampiero.marra@ucl.ac.uk


JRM documentation built on July 13, 2017, 5:03 p.m.