We consider modeling and prediction of Capelin distribution in the Barents sea based on zero-inflated count observation data that vary continuously over a specified survey region. The model is a mixture of two components; a one-point distribution at the origin and a Poisson distribution with spatio-temporal intensity, where both intensity and mixing proportions are modeled by some auxiliary variables and unobserved spatio-temporal effects. The spatio-temporal effects are modeled by a dynamic linear model combined with the predictive Gaussian process. We develop an efficient posterior computational algorithm for the model using a data augmentation strategy. The performance of the proposed model is demonstrated through simulation studies, and an application to the number of Capelin caught in the Barents sea from 2014 to 2019.
翻译:我们考虑根据零充气计数观测数据对巴伦支海的卡普林分布进行建模和预测,这些数据在特定调查区域中变化不一。模型由两个部分组成:原点分布和波森分布,具有时空强度,强度和混合比例都以一些辅助变量和未观测的时空效应为模型,空间时空效应以动态线性模型为模型模型模型模型模型,与预测高山进程相结合。我们利用数据增强战略为模型开发高效的后方计算算法。通过模拟研究以及2014年至2019年巴伦支海捕获的卡普林人数的应用,展示了拟议模型的性能。