Dynamic Discrete-time Duration Models: Estimation via Markov Chain Monte Carlo
* Universität München
Ludwig Fahrmeir * and Leonhard Knorr-Held †
Discrete-time grouped duration data, with one or multiple types of
terminating events, are often observed in social sciences or economics. In
this paper we suggest and discuss dynamic models for flexible Bayesian
nonparametric analysis of such data. These models allow simultaneous
incorporation and estimation of baseline hazards and time-varying
covariate effects, without imposing particular parametric forms. Methods
for exploring the possibility of time-varying effects, as for example the
impact of nationality or unemployment insurance benefits on the
probability of re-employment, have recently gained increasing interest.
Our modeling and estimation approach is fully Bayesian and makes use of
Markov Chain Monte Carlo (MCMC) simulation techniques. A detailed
analysis of unemployment duration data, with full-time job,
part-time job and other causes as terminating events, illustrates our
methods and shows how they can be used to obtain refined results and
interpretations.
† Universität München