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Bayesian estimation of bandwidth in semiparametric kernel estimation of unknown probability mass and regression functions of count data

机译:未知概率质量的半参数核估计中的带宽贝叶斯估计和计数数据的回归函数

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摘要

This work takes advantage of semiparametric modelling which improves significantly in many situations the estimation accuracy of the purely nonparametric approach. Herein for semiparametric estimations of probability mass function (pmf) of count data, and an unknown count regression function (crf), the kernel used is a binomial one and the bandiwdth selection is investigated by developing Bayesian approaches. About the latter, Bayes local and global bandwidth approaches are used to establish data-driven selection procedures in semiparametric framework. From conjugate beta prior distributions of the smoothing parameter and under the squared errors loss function, Bayes estimate for pmf is obtained in closed form. This is not available for the crf which is computed by the Markov Chain Monte Carlo technique. Simulation studies demonstrate that both proposed methods perform better than the classical cross-validation procedures, in particular the smoothing quality and execution times are optimized. All applications are made on real data sets.
机译:这项工作利用了半参数建模的优势,该模型在许多情况下显着提高了纯非参数方法的估计精度。在此,对于计数数据的概率质量函数(pmf)和未知计数回归函数(crf)的半参数估计,所使用的核是二项式的,并且通过发展贝叶斯方法研究了带宽选择。关于后者,贝叶斯局部和全局带宽方法用于在半参数框架中建立数据驱动的选择过程。从平滑参数的共轭β先验分布以及在平方误差损失函数下,以封闭形式获得pmf的贝叶斯估计。这不适用于通过Markov Chain Monte Carlo技术计算的crf。仿真研究表明,两种提出的方​​法都比经典的交叉验证程序执行得更好,特别是平滑质量和执行时间得到了优化。所有应用程序均基于真实数据集。

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