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Spatial and Spatio-Temporal Log-Gaussian Cox Processes: Extending the Geostatistical Paradigm

机译:时空对数高斯Cox过程:扩展地统计范式

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In this paper we first describe the class of log-Gaussian Cox processes (LGCPs) as models for spatial and spatio-temporal point process data. We discuss inference, with a particular focus on the computational challenges of likelihood-based inference. We then demonstrate the usefulness of the LGCP by describing four applications: estimating the intensity surface of a spatial point process; investigating spatial segregation in a multi-type process; constructing spatially continuous maps of disease risk from spatially discrete data; and real-time health surveillance. We argue that problems of this kind fit naturally into the realm of geostatistics, which traditionally is defined as the study of spatially continuous processes using spatially discrete observations at a finite number of locations. We suggest that a more useful definition of geostatistics is by the class of scientific problems that it addresses, rather than by particular models or data formats.
机译:在本文中,我们首先将对数高斯Cox过程(LGCP)类描述为空间和时空点过程数据的模型。我们讨论推理,特别关注基于似然推理的计算挑战。然后,我们通过描述四个应用程序来证明LGCP的有用性:估计空间点过程的强度表面;研究多类型过程中的空间隔离;从空间离散数据构建疾病风险的空间连续图;和实时健康监控。我们认为,这类问题自然适用于地统计学领域,传统上将其定义为使用有限数量地点的空间离散观测来研究空间连续过程。我们建议对地统计学进行更有用的定义是根据其处理的科学问题类别,而不是通过特定的模型或数据格式。

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