使用有限混合模型建模碰撞计数

Safaa. K. Kadhem, Sadeq A. Kadhim
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引用次数: 0

摘要

本文旨在利用有限混合模型对Al Muthanna治理中的崩溃计数进行建模。我们使用最常用的MCMC方法之一Gibbs采样器来实现贝叶斯推理来估计模型参数。我们基于合成数据进行了模拟研究,以检查采样器找到模型最佳估计的能力。我们使用两个众所周知的标准,即AIC和BIC,来确定最适合数据的模型。最后,我们应用我们的采样器来模拟Al Muthanna治理中的崩溃计数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling the crashes count using finite mixture models
"This paper aims at the modeling the crashes count in Al Muthanna governance using finite mixture model. We use one of the most common MCMC method which is called the Gibbs sampler to implement the Bayesian inference for estimating the model parameters. We perform a simulation study, based on synthetic data, to check the ability of the sampler to find the best estimates of the model. We use the two well-known criteria, which are the AIC and BIC, to determine the best model fitted to the data. Finally, we apply our sampler to model the crashes count in Al Muthanna governance.
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