We provide a detailed hands-on tutorial for the R package SemiParSampleSel (version 1.5). The package implements selection models for count responses fitted by penalized maximum likelihood estimation. The approach can deal with non-random sample selection, flexible covariate effects, heterogeneous selection mechanisms and varying distributional parameters. We provide an overview of the theoretical background and then demonstrate how SemiParSampleSel can be used to fit interpretable models of different complexity. We use data from the German Socio-Economic Panel survey (SOEP v28, 2012. doi: 10.5684/soep.v28) throughout the tutorial
This paper provides a comprehensive summary of the most promising estimation methods for the (dichot...
We develop a distribution regression model under endogenous sample selection. This model is a semipa...
Non-random sample selection is a commonplace amongst many e mpirical studies and it app...
Sample selection models deal with the situation in which an outcome of interest is observed for a re...
Sample selection models deal with the situation in which an outcome of interest is observed for a r...
Non-random sample selection arises when observations do not come from a random sample. Instead, indi...
This paper describes the implementation of Heckman-type sample selection models in R. We discuss the...
This paper describes the implementation of Heckman-type sample selection models in R. We discuss the...
Sample selection models are employed when an outcome of interest is observed for a restricted non-ra...
It is often the case that an outcome of interest is observed for a restricted non-randomly selected ...
The aim of this paper is to describe the implementation and to provide a tutorial for the R package ...
This paper shows how truncated, censored, hurdle, zero inflated and underreported count models can b...
The aim of this paper is to describe the implementation and to provide a tutorial for the R package ...
AbstractIt is often the case that an outcome of interest is observed for a restricted non-randomly s...
In this thesis estimators for "fixed-effects" panel data sample selection models are discussed, most...
This paper provides a comprehensive summary of the most promising estimation methods for the (dichot...
We develop a distribution regression model under endogenous sample selection. This model is a semipa...
Non-random sample selection is a commonplace amongst many e mpirical studies and it app...
Sample selection models deal with the situation in which an outcome of interest is observed for a re...
Sample selection models deal with the situation in which an outcome of interest is observed for a r...
Non-random sample selection arises when observations do not come from a random sample. Instead, indi...
This paper describes the implementation of Heckman-type sample selection models in R. We discuss the...
This paper describes the implementation of Heckman-type sample selection models in R. We discuss the...
Sample selection models are employed when an outcome of interest is observed for a restricted non-ra...
It is often the case that an outcome of interest is observed for a restricted non-randomly selected ...
The aim of this paper is to describe the implementation and to provide a tutorial for the R package ...
This paper shows how truncated, censored, hurdle, zero inflated and underreported count models can b...
The aim of this paper is to describe the implementation and to provide a tutorial for the R package ...
AbstractIt is often the case that an outcome of interest is observed for a restricted non-randomly s...
In this thesis estimators for "fixed-effects" panel data sample selection models are discussed, most...
This paper provides a comprehensive summary of the most promising estimation methods for the (dichot...
We develop a distribution regression model under endogenous sample selection. This model is a semipa...
Non-random sample selection is a commonplace amongst many e mpirical studies and it app...