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Space-Time Models in Stochastic Geometry

机译:随机几何中的时空模型

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Space-time models in stochastic geometry are used in many applications. Mostly these are models of space-time point processes. A second frequent situation are growth models of random sets. The present chapter aims to present more general models. It has two parts according to whether the time is considered to be discrete or continuous. In the discrete-time case we focus on state-space models and the use of Monte Carlo methods for the inference of model parameters. Two applications to real situations are presented: a) evaluation of a neurophysiological experiment, b) models of interacting discs. In the continuous-time case we discuss space-time Lévy-driven Cox processes with different second-order structures. Besides the well-known separable models, models with separable kernels are considered. Moreover fully nonseparable models based on ambit processes are introduced. Inference for the models based on second-order statistics is developed.
机译:随机几何中的时空模型用于许多应用中。主要是这些是时空点流程的模型。第二种频繁情况是随机集的增长模型。本章旨在展示更多一般模型。根据时间是否被认为是离散或连续的时间,它有两部分。在离散时间案例中,我们专注于状态空间模型以及使用Monte Carlo方法来推动模型参数。存在对实际情况的两个应用:a)对杂物生理实验,b)互动盘的模型。在连续时间案例中,我们讨论具有不同二阶结构的时空Lévy驱动的Cox流程。除了众所周知的可分离型号外,考虑了具有可分离内核的型号。此外,介绍了基于Ambit过程的完全不可密定的模型。开发了基于二阶统计数据的模型的推理。

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