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Bayesian spatiotemporal analysis of zero-inflated biological population density data by a delta-normal spatiotemporal additive model

机译:零正态时空加性模型对零膨胀生物种群密度数据的贝叶斯时空分析

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摘要

We evaluate the spatiotemporal changes in the density of a particular species of crustacean known as deep-water rose shrimp, Parapenaeus longirostris, based on biological sample data collected during trawl surveys carried out from 1995 to 2006 as part of the international project MEDITS (MEDiterranean International Trawl Surveys). As is the case for many biological variables, density data are continuous and characterized by unusually large amounts of zeros, accompanied by a skewed distribution of the remaining values. Here we analyze the normalized density data by a Bayesian delta-normal semiparametric additive model including the effects of covariates, using penalized regression with low-rank thin-plate splines for nonlinear spatial and temporal effects. Modeling the zero and nonzero values by two joint processes, as we propose in this work, allows to obtain great flexibility and easily handling of complex likelihood functions, avoiding inaccurate statistical inferences due to misclassification of the high proportion of exact zeros in the model. Bayesian model estimation is obtained by Markov chain Monte Carlo simulations, suitably specifying the complex likelihood function of the zero-inflated density data. The study highlights relevant nonlinear spatial and temporal effects and the influence of the annual Mediterranean oscillations index and of the sea surface temperature on the distribution of the deep-water rose shrimp density.
机译:我们根据1995年至2006年作为国际项目MEDITS(MEDITerranean International)进行的拖网调查收集的生物学样本数据,评估了一种称为深水玫瑰虾(Parapenaeus longirostris)的甲壳动物特定种类的密度的时空变化。拖网调查)。像许多生物学变量一样,密度数据是连续的,其特征是异常大量的零以及剩余值的偏斜分布。在这里,我们使用贝叶斯三角洲-正态半参数加性模型(包括协变量的影响)对归一化的密度数据进行了分析,并使用带有低秩薄板样条的惩罚性回归来分析非线性时空效应。正如我们在这项工作中建议的那样,通过两个联合过程对零值和非零值进行建模,可以获取很大的灵活性,并且可以轻松处理复杂的似然函数,避免了由于模型中准确零点比例过高而导致分类错误的统计推断。贝叶斯模型估计是通过马尔可夫链蒙特卡罗模拟获得的,适当地指定了零膨胀密度数据的复数似然函数。该研究强调了相关的非线性时空效应,以及地中海年度振荡指数和海面温度对深水玫瑰虾密度分布的影响。

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