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A Stochastic EM Algorithm for Quantile and Censored Quantile Regression Models

机译:分位数和删失分位数回归模型的随机EM算法

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摘要

We proposed a stochastic EM algorithm for quantile and censored quantile regression models in order to circumvent some limitations of the EM algorithm and Gibbs sampler. We conducted several simulation studies to illustrate the performance of the algorithm and found that the procedure performs as better as the Gibbs sampler, and outperforms the EM algorithm in uncensored situation. Finally we applied the methodology to the classical Engel food expenditure data and the labour supply data with left censoring, finding that the SEM algorithm behaves more satisfying than the Gibbs sampler does.
机译:为了避免EM算法和Gibbs采样器的某些局限性,我们针对分位数和删失分位数回归模型提出了一种随机EM算法。我们进行了一些仿真研究,以说明该算法的性能,发现该过程的性能与Gibbs采样器一样好,并且在未经审查的情况下优于EM算法。最后,我们将该方法应用于经典的恩格尔食品支出数据和带有左审查的劳动力供给数据,发现SEM算法的行为比Gibbs采样器更令人满意。

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