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A filtered polynomial approach to density estimation

机译:密度估计的滤波多项式方法

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摘要

In this paper, a little known computational approach to density estimation based on filtered polynomial approximation is investigated. It is accompanied by the first online available density estimation computer program based on a filtered polynomial approach. The approximation yields the unknown distribution and density as the product of a monotonic increasing polynomial and a filter. The filter may be considered as a target distribution which gets fixed prior to the estimation. The filtered polynomial approach then provides coefficient estimates for (close) algebraic approximations to (a) the unknown density function and (b) the unknown cumulative distribution function as well as (c) a transformation (e.g., normalization) from the unknown data distribution to the filter. This approach provides a high degree of smoothness in its estimates for univariate as well as for multivariate settings. The nice properties as the high degree of smoothness and the ability to select from different target distributions are suited especially in MCMC simulations. Two applications in Sects. 1 and 7 will show the advantages of the filtered polynomial approach over the commonly used kernel estimation method.
机译:本文研究了一种鲜为人知的基于滤波多项式逼近的密度估计计算方法。它附带有第一个基于滤波多项式方法的在线可用密度估计计算机程序。作为单调递增多项式与滤波器的乘积,近似值得出未知的分布和密度。该滤波器可以被认为是在估计之前固定的目标分布。然后,滤波后的多项式方法为(a)未知密度函数和(b)未知累积分布函数以及(c)从未知数据分布到(a)的变换(例如归一化)提供(近似)代数近似的系数估计。过滤器。这种方法在单变量和多变量设置的估计中都提供了高度的平滑性。高度的平滑度和从不同目标分布中进行选择的能力等出色的特性特别适用于MCMC仿真。 Sect中有两个应用程序。图1和图7将显示滤波多项式方法相对于常用核估计方法的优势。

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