This paper presents a convenient shortcut method for implementing the Heckman estimator of the dynamic random effects probit model and other dynamic nonlinear panel data models using standard software. It then compares the estimators proposed by Heckman, Orme and Wooldridge, based on three alternative approximations, first in an empirical model for the probability of unemployment and then in a set of simulation experiments. The results indicate that none of the three estimators dominates the other two in all cases. In most cases, all three estimators display satisfactory performance, except when the number of time periods is very small
Estimation of random-effects dynamic probit models for panel data entailsthe so-called “initial cond...
This paper investigates using maximum simulated likelihood (MSL) estimation for random-effects dynam...
Recent advances in computing power have brought the use of computer intensive estimation methods of ...
This paper presents a convenient shortcut method for implementing the Heckman estimator of the dynam...
This paper presents a convenient shortcut method for implementing the Heckman estimator of the dynam...
This paper presents a convenient shortcut method for implement-ing the Heckman estimator of the dyna...
For discrete panel data, the dynamic relationship between successive observations is often of intere...
For discrete panel data, the dynamic relationship between successive observations is often of intere...
This paper presents the gretl function package DPB for estimating dynamic binary models with panel d...
This paper presents the gretl function package DPB for estimating dynamic binary models with panel d...
This study develops a new bias-corrected estimator for the fixed-effects dynamic panel data model an...
This paper compares three different estimation approaches for the random effects dynamic panel data ...
In this paper, new estimating methods proposed for dynamic and static probit models with panel data....
This thesis represents an attempt to provide a deeper knowledge of the finite sample properties of s...
First Published: 1st December 2018Dynamic random-effects probit models are increasingly applied in m...
Estimation of random-effects dynamic probit models for panel data entailsthe so-called “initial cond...
This paper investigates using maximum simulated likelihood (MSL) estimation for random-effects dynam...
Recent advances in computing power have brought the use of computer intensive estimation methods of ...
This paper presents a convenient shortcut method for implementing the Heckman estimator of the dynam...
This paper presents a convenient shortcut method for implementing the Heckman estimator of the dynam...
This paper presents a convenient shortcut method for implement-ing the Heckman estimator of the dyna...
For discrete panel data, the dynamic relationship between successive observations is often of intere...
For discrete panel data, the dynamic relationship between successive observations is often of intere...
This paper presents the gretl function package DPB for estimating dynamic binary models with panel d...
This paper presents the gretl function package DPB for estimating dynamic binary models with panel d...
This study develops a new bias-corrected estimator for the fixed-effects dynamic panel data model an...
This paper compares three different estimation approaches for the random effects dynamic panel data ...
In this paper, new estimating methods proposed for dynamic and static probit models with panel data....
This thesis represents an attempt to provide a deeper knowledge of the finite sample properties of s...
First Published: 1st December 2018Dynamic random-effects probit models are increasingly applied in m...
Estimation of random-effects dynamic probit models for panel data entailsthe so-called “initial cond...
This paper investigates using maximum simulated likelihood (MSL) estimation for random-effects dynam...
Recent advances in computing power have brought the use of computer intensive estimation methods of ...