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Bayesian Inference of Spatially Correlated Binary Data Using Skew-Normal Latent Variables with Application in Tooth Caries Analysis

机译:斜偏正态潜变量在空间相关二进制数据上的贝叶斯推断及其在龋齿分析中的应用

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The analysis of spatially correlated binary data observed on lattices is an interesting topic that catches the attention of many scholars of different scientific fields like epidemiology, medicine, agriculture, biology, geology and geography. To overcome the encountered difficulties upon fitting the autologistic regression model to analyze such data via Bayesian and/or Markov chain Monte Carlo (MCMC) techniques, the Gaussian latent variable model has been enrolled in the methodology. Assuming a normal distribution for the latent random variable may not be realistic and wrong, normal assumptions might cause bias in parameter estimates and affect the accuracy of results and inferences. Thus, it entails more flexible prior distributions for the latent variable in the spatial models. A review of the recent literature in spatial statistics shows that there is an increasing tendency in presenting models that are involving skew distributions, especially skew-normal ones. In this study, a skew-normal latent variable modeling was developed in Bayesian analysis of the spatially correlated binary data that were acquired on uncorrelated lattices. The proposed methodology was applied in inspecting spatial dependency and related factors of tooth caries occurrences in a sample of students of Yasuj University of Medical Sciences, Yasuj, Iran. The results indicated that the skew-normal latent variable model had validity and it made a decent criterion that fitted caries data.
机译:在格子上观察到的与空间相关的二进制数据的分析是一个有趣的话题,引起了流行病学,医学,农业,生物学,地质学和地理学等不同科学领域的许多学者的关注。为了克服在通过贝叶斯和/或马尔可夫链蒙特卡洛(MCMC)技术拟合自动回归模型分析此类数据时遇到的困难,该方法已采用了高斯潜变量模型。假设潜在随机变量的正态分布可能是不现实和错误的,正态假设可能会导致参数估计出现偏差,并影响结果和推断的准确性。因此,它需要空间模型中潜在变量的更灵活的先验分布。对空间统计方面的最新文献的回顾表明,呈现出包含偏态分布(尤其是偏态正态分布)的模型的趋势越来越大。在这项研究中,在不相关晶格上获取的空间相关二进制数据的贝叶斯分析中,建立了偏正态潜变量模型。拟议的方法用于检查伊朗Yasuj Yasuj医科大学学生样本中牙齿龋齿发生的空间依赖性和相关因素。结果表明,斜偏正态潜变量模型具有有效性,并为拟合龋齿数据提供了不错的判据。

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