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首页> 外文期刊>Bernoulli: official journal of the Bernoulli Society for Mathematical Statistics and Probability >Variational estimators for the parameters of Gibbs point process models
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Variational estimators for the parameters of Gibbs point process models

机译:Gibbs点过程模型参数的变分估计量

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摘要

This paper proposes a new estimation technique for fitting parametric Gibbs point process models to a spatial point pattern dataset. The technique is a counterpart, for spatial point processes, of the variational estimators for Markov random fields developed by Almeida and Gidas. The estimator does not require the point process density to be hereditary, so it is applicable to models which do not have a conditional intensity, including models which exhibit geometric regularity or rigidity. The disadvantage is that the intensity parameter cannot be estimated: inference is effectively conditional on the observed number of points. The new procedure is faster and more stable than existing techniques, since it does not require simulation, numerical integration or optimization with respect to the parameters
机译:本文提出了一种新的估计技术,用于将参数Gibbs点过程模型拟合到空间点模式数据集。对于空间点过程,该技术是Almeida和Gidas开发的Markov随机场的变分估计量的对应方法。估计器不需要点过程密度是遗传的,因此它适用于没有条件强度的模型,包括表现出几何规律性或刚度的模型。缺点是无法估计强度参数:推断实际上取决于观察到的点数。新程序比现有技术更快,更稳定,因为它不需要对参数进行仿真,数值积分或优化

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