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Bayesian multivariate mixed-scale density estimation

机译:贝叶斯多元混合尺度密度估计

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Although continuous density estimation has received abundant attention in the Bayesian nonparametrics literature, there is limited theory on multivariate mixed scale density estimation. In this note, we consider a general framework to jointly model continuous, count and categorical variables under a nonparametric prior, which is induced through rounding latent variables having an unknown density with respect to Lebesgue measure. For the proposed class of priors, we provide sufficient conditions for large support, strong consistency and rates of posterior contraction. These conditions allow one to convert sufficient conditions obtained in the setting of multivariate continuous density estimation to the mixed scale case. To illustrate the procedure, a rounded multivariate nonparametric mixture of Gaussians is introduced and applied to a crime and communities dataset.
机译:尽管连续密度估计已在贝叶斯非参数文献中引起了广泛关注,但关于多元混合尺度密度估计的理论仍然有限。在本说明中,我们考虑了一个通用框架,该模型可以对非参数先验条件下的连续变量,计数变量和分类变量进行联合建模,这是通过对具有未知密度(相对于Lebesgue测度)的潜在变量进行四舍五入而得出的。对于拟议的先验类别,我们提供了充足的条件以提供大量支持,强大的一致性和后收缩率。这些条件允许将在多变量连续密度估计的设置中获得的充分条件转换为混合比例情况。为了说明该过程,引入了高斯变量的舍入多元非参数混合并将其应用于犯罪和社区数据集。

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