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A Bayesian approach to bandwidth selection for multivariate kernel density estimation

机译:用于多元核密度估计的贝叶斯带宽选择方法

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摘要

Kernel density estimation for multivariate data is an important technique that has a wide range of applications. However, it has received significantly less attention than its univariate counterpart. The lower level of interest in multivariate kernel density estimation is mainly due to the increased difficulty in deriving an optimal data-driven bandwidth as the dimension of the data increases. We provide Markov chain Monte Carlo (MCMC) algorithms for estimating optimal bandwidth matrices for multivariate kernel density estimation. Our approach is based on treating the elements of the bandwidth matrix as parameters whose posterior density can be obtained through the likelihood cross-validation criterion. Numerical studies for bivariate data show that the MCMC algorithm generally performs better than the plug-in algorithm under the Kullback–Leibler information criterion, and is as good as the plug-in algorithm under the mean integrated squared error (MISE) criterion. Numerical studies for five-dimensional data show that our algorithm is superior to the normal reference rule. Our MCMC algorithm is the first data-driven bandwidth selector for multivariate kernel density estimation that is applicable to data of any dimension.
机译:多元数据的核密度估计是一项具有广泛应用范围的重要技术。但是,与单变量变量相比,它受到的关注要少得多。多元内核密度估计中关注度较低的主要原因是,随着数据维数的增加,获得最佳数据驱动带宽的难度增加。我们提供马尔可夫链蒙特卡罗(MCMC)算法,用于估计用于多变量内核密度估计的最佳带宽矩阵。我们的方法基于将带宽矩阵的元素视为参数,其后密度可以通过似然交叉验证准则获得。对双变量数据的数值研究表明,在Kullback-Leibler信息准则下,MCMC算法的性能通常优于插件算法,在均值综合平方误差(MISE)准则下,MCMC算法的性能也优于插件算法。五维数据的数值研究表明,我们的算法优于常规参考规则。我们的MCMC算法是第一个用于多变量内核密度估计的数据驱动带宽选择器,适用于任何维度的数据。

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