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bayesian semiparametric estimation of discrete duration models: an application of the dirichlet process prior (replication data)

This paper proposes a Bayesian estimator for a discrete time duration model which incorporates a non-parametric specification of the unobserved heterogeneity distribution, through the use of a Dirichlet process prior. This estimator offers distinct advantages over the Nonparametric Maximum Likelihood estimator of this model. First, it allows for exact finite sample inference. Second, it is easily estimated and mixed with flexible specifications of the baseline hazard. An application of the model to employment duration data from the Canadian province of New Brunswick is provided.

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Suggested Citation

Campolieti, Michele (2001): Bayesian semiparametric estimation of discrete duration models: an application of the dirichlet process prior (replication data). Version: 1. Journal of Applied Econometrics. Dataset. https://journaldata.zbw.eu/dataset/bayesian-semiparametric-estimation-of-discrete-duration-models-an-application-of-the-dirichlet-proc?activity_id=82cb188d-9084-40c3-81c1-f0eb1affadd4