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MULTISCALE BERNSTEIN POLYNOMIALS FOR DENSITIES

机译:密度的多尺度Bernstein多项式

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Our focus is on constructing a multiscale nonparametric prior for densities. The Bayes density estimation literature is dominated by single scale methods, with the exception of Polya trees, which favor overly-spiky densities even when the truth is smooth. We propose a multiscale Bernstein polynomial family of priors, which produce smooth realizations that do not rely on hard partitioning of the support. At each level in an infinitely-deep binary tree, we place a beta dictionary density; within a scale the densities are equivalent to Bernstein polynomials. Using a stick-breaking characterization, stochastically decreasing weights are allocated to the finer scale dictionary elements. A slice sampler is used for posterior computation, and properties are described. The method characterizes densities with locally-varying smoothness, and can produce a sequence of coarse to fine density estimates. An extension for Bayesian testing of group differences is introduced and applied to DNA methylation array data.
机译:我们的重点是构造密度的多尺度非参数先验。贝叶斯(Bayes)密度估计文献主要由单尺度方法主导,但波利亚(Polya)树除外,即使事实真是顺利,波利亚树也倾向于过尖峰密度。我们提出了一个多尺度先验的伯恩斯坦多项式族,该族可产生不依赖于支持的硬划分的平滑实现。在无限深的二叉树的每个级别上,我们都放置一个beta字典密度。在一个尺度上,密度等于伯恩斯坦多项式。使用不折不扣的特性,将随机减少的权重分配给较小比例的字典元素。切片采样器用于后验计算,并描述了属性。该方法使用局部变化的平滑度来表征密度,并且可以产生一系列从粗到细的密度估算值。引入了用于组差异的贝叶斯测试的扩展,并将其应用于DNA甲基化阵列数据。

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