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Strong consistency of nonparametric Bayes density estimation on compact metric spaces with applications to specific manifolds

机译:紧凑度量空间上非参数贝叶斯密度估计与特定流形的强一致性

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This article considers a broad class of kernel mixture density models on compact metric spaces and manifolds. Following a Bayesian approach with a nonparametric prior on the location mixing distribution, sufficient conditions are obtained on the kernel, prior and the underlying space for strong posterior consistency at any continuous density. The prior is also allowed to depend on the sample size n and sufficient conditions are obtained for weak and strong consistency. These conditions are verified on compact Euclidean spaces using multivariate Gaussian kernels, on the hypersphere using a von Mises-Fisher kernel and on the planar shape space using complex Watson kernels.
机译:本文考虑了紧凑度量空间和流形上的一类广泛的核混合物密度模型。在位置混合分布上采用非参数先验的贝叶斯方法之后,在核,先验和下层空间上获得了足够的条件,可以在任何连续密度下实现强后验一致性。还允许先验取决于样本大小n,并且获得了足够的条件以实现弱和强一致性。这些条件在使用多元高斯核的紧凑欧几里得空间上,在使用冯·米塞斯·费舍尔核的超球面上以及在使用复杂沃森核的平面形状空间上得到验证。

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