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Continuous Contour Monte Carlo for marginal density estimation with an application to a spatial statistical model

机译:连续轮廓蒙特卡洛用于边际密度估计及其在空间统计模型中的应用

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摘要

The problem of marginal density estimation for a multivariate density function f (x) can be generally stated as a problem of density function estimation for a random vector lambda(x) of dimension lower than that of x. In this article, we propose a technique, the so-called continuous Contour Monte Carlo (CCMC) algorithm, for solving this problem. CCMC can be viewed as a continuous version of the contour Monte Carlo (CMC) algorithm recently proposed in the literature. CCMC abandons the use of sample space partitioning and incorporates the techniques of kernel density estimation into its simulations. CCMC is more general than other marginal density estimation algorithms. First, it works for any density functions, even for those having a rugged or unbalanced energy landscape. Second, it works for any transformation; (x) regardless of the availability of the analytical form of the inverse transformation. In this article, CCMC is applied to estimate the unknown normalizing constant function for a spatial autologistic model, and the estimate is then used in a Bayesian analysis for the spatial autologistic model in place of the true normalizing constant function. Numerical results on the U.S. cancer mortality data indicate that the Bayesian method can produce much more accurate estimates than the MPLE and MCMLE methods for the parameters of the spatial autologistic model.
机译:多元密度函数f(x)的边际密度估计问题通常可以说成是维数小于x的随机向量lambda(x)的密度函数估计问题。在本文中,我们提出了一种用于解决此问题的技术,即所谓的连续轮廓蒙特卡洛(CCMC)算法。 CCMC可以看作是最近在文献中提出的轮廓蒙特卡洛(CMC)算法的连续版本。 CCMC放弃了对样本空间划分的使用,并将内核密度估计技术纳入其仿真中。 CCMC比其他边际密度估计算法更通用。首先,它适用于任何密度函数,甚至适用于那些崎or或不平衡的能源格局。其次,它适用于任何转换。 (x)不管逆变换的解析形式是否可用。在本文中,将CCMC用于估计空间自物流模型的未知归一化常数函数,然后将估计值用于空间自物流模型的贝叶斯分析中,以代替真正的归一化常数函数。美国癌症死亡率数据的数值结果表明,对于空间自动物流模型的参数,贝叶斯方法可以比MPLE和MCMLE方法产生更准确的估计。

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