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首页> 外文期刊>Statistica Sinica >BAYESIAN SPATIAL-TEMPORAL MODELING OF ECOLOGICAL ZERO-INFLATED COUNT DATA
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BAYESIAN SPATIAL-TEMPORAL MODELING OF ECOLOGICAL ZERO-INFLATED COUNT DATA

机译:生态零相关数据的贝叶斯时空建模

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摘要

A Bayesian hierarchical model is developed for count data with spatial and temporal correlations as well as excessive zeros, uneven sampling intensities, and inference on missing spots. Our contribution is to develop a model on zero-inflated count data that provides flexibility in modeling spatial patterns in a dynamic manner and also improves the computational efficiency via dimension reduction. The proposed methodology is of particular importance for studying species presence and abundance in the field of ecological sciences. The proposed model is employed in the analysis of the survey data by the Northeast Fisheries Sciences Center (NEFSC) for estimation and prediction of the Atlantic cod in the Gulf of Maine - Georges Bank region. Model comparisons based on the deviance information criterion and the log predictive score show the improvement by the proposed spatial-temporal model.
机译:贝叶斯分层模型针对具有时空相关性,过零,采样强度不均匀以及缺失点推断的计数数据而开发。我们的贡献是针对零膨胀计数数据开发一个模型,该模型可灵活地以动态方式对空间模式进行建模,并通过降维来提高计算效率。所提出的方法对于研究生态科学领域中物种的存在和丰度特别重要。东北渔业科学中心(NEFSC)将提出的模型用于调查数据的分析,以估计和预测缅因湾-乔治银行地区的大西洋鳕鱼。基于偏差信息准则和对数预测得分的模型比较表明,所提出的时空模型可以改善这种情况。

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