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Adaptive Bayesian multivariate density estimation with Dirichlet mixtures

机译:Dirichlet混合物的自适应贝叶斯多元估计

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We show that rate-adaptive multivariate density estimation can be performed using Bayesian methods based on Dirichlet mixtures of normal kernels with a prior distribution on the kernel's covariance matrix parameter. We derive sufficient conditions on the prior specification that guarantee convergence to a true density at a rate that is minimax optimal for the smoothness class to which the true density belongs. No prior knowledge of smoothness is assumed. The sufficient conditions are shown to hold for the Dirichlet location mixture-of-normals prior with a Gaussian base measure and an inverse Wishart prior on the covariance matrix parameter. Locally H?lder smoothness classes and their anisotropic extensions are considered. Our study involves several technical novelties, including sharp approximation of finitely differentiable multivariate densities by normal mixtures and a new sieve on the space of such densities.
机译:我们表明,可以使用贝叶斯方法,基于正态核的Dirichlet混合并在核的协方差矩阵参数上进行先验分布,来执行速率自适应的多元密度估计。我们在现有技术规格书上得出了足够的条件,这些条件可以保证以对于真实密度所属的平滑度类别而言最小最大最优的速率收敛到真实密度。假定没有先验的光滑度知识。对于协方差矩阵参数上的高斯基本测度和反Wishart而言,显示了足以满足Dirichlet位置法线混合的条件。考虑了局部的Hilder平滑度类及其各向异性扩展。我们的研究涉及几种技术上的新颖性,包括通过正态混合物对有限可微分多元密度的近似逼近,以及在这种密度空间上的新筛子。

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