Bayesian Spatial Split-Population Models for the Social Sciences

Brandon Bolte, N. Huynh, Bumba Mukherjee, Sergio Béjar, N. Schmidt
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Abstract

Survival data often include an “immune” or cured fraction of units that will never experience an event and conversely, an “at risk” fraction that can fail or die. It is also plausible that spatial clustering (i.e., spatial autocorrelation) in latent or unmeasured risk factors among adjacent units can affect their odds of being immune and survival time of interest. To address these methodological challenges, this article introduces a class of parametric Spatial split-population survival models—also denoted as Spatial cure models—that explicitly accounts for the influence of spatial autocorrelation among the underlying risk propensities of units on not only their probability of being immune but also their risk of experiencing the event of interest. Our approach is Bayesian in that we account for spatial autocorrelation in unmeasured risk factors across adjacent units in the cure model’s split-stage (cure rate portion) and survival stage via the conditional autoregressive prior (CAR) prior. The article also presents a set of parametric split-population survival models with non-spatial i.i.d frailties and without frailties, and time-varying covariates can be included in all the models mentioned above. Bayesian inference of the non-spatial and spatial cure models is conducted via a hybrid Markov Chain Monte Carlo (MCMC) algorithm. The relevant full conditional distributions required for MCMC sampling are also derived and presented in the paper. We fit all the models to survival data on post-civil war peace to demonstrate their main applicability and main features.
社会科学贝叶斯空间分裂-人口模型
生存数据通常包括永远不会经历事件的“免疫”或治愈部分单位,相反,可能失败或死亡的“风险”部分单位。相邻单位之间潜在或未测量风险因素的空间聚类(即空间自相关)也可能影响其免疫几率和感兴趣的生存时间。为了解决这些方法上的挑战,本文引入了一类参数化的空间分裂-种群生存模型(也称为空间治愈模型),该模型明确地说明了单元潜在风险倾向之间的空间自相关性不仅对其免疫概率有影响,而且对其经历感兴趣事件的风险有影响。我们的方法是贝叶斯的,因为我们通过条件自回归先验(CAR)先验,在治愈模型的分裂阶段(治愈率部分)和生存阶段的相邻单元中,考虑了未测量风险因素的空间自相关。本文还提出了一组具有非空间脆弱性和不具有脆弱性的参数分裂种群生存模型,这些模型均可包含时变协变量。通过混合马尔可夫链蒙特卡罗(MCMC)算法对非空间模型和空间模型进行贝叶斯推理。本文还推导并给出了MCMC采样所需的完整条件分布。我们将所有模型与内战后和平时期的生存数据进行拟合,以证明它们的主要适用性和主要特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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