A Classical MCMC Approach to the Estimation of Limited Dependent Variable Models of Time Series

被引:0
|
作者
George Monokroussos
机构
[1] University at Albany,Department of Economics
[2] SUNY,undefined
[3] Business Administration Building,undefined
来源
Computational Economics | 2013年 / 42卷
关键词
Discrete choice models; Censored models; Data augmentation; Markov Chain Monte Carlo; Gibbs sampling; Taylor rules; Alan Greenspan; C15; C24; C25; E52;
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摘要
Estimating limited dependent variable time series models through standard extremum methods can be a daunting computational task because of the need for integration of high order multiple integrals and/or numerical optimization of difficult objective functions. This paper proposes a classical Markov Chain Monte Carlo (MCMC) estimation technique with data augmentation that overcomes both of these problems. The asymptotic properties of the proposed estimator are discussed. Furthermore, a practical and flexible algorithmic framework for this class of models is proposed and is illustrated using simulated data, thus also offering some insight into the small-sample biases of such estimators. Finally, the proposed framework is used to estimate a dynamic, discrete-choice monetary policy reaction function for the United States during the Greenspan years.
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页码:71 / 105
页数:34
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