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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >A DATA DRIVEN PROCEDURE FOR DENSITY ESTIMATION WITH SOME APPLICATIONS
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A DATA DRIVEN PROCEDURE FOR DENSITY ESTIMATION WITH SOME APPLICATIONS

机译:数据驱动程序用于某些应用的密度估算

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摘要

This paper deals with the probability density estimation using a kernel-based approach where the window size of the kernel is found by a data-driven procedure. It is theoretically shown that, under certain assumptions, the estimated densities on bounded sets can be asymptotically unbiased when the width of window is obtained from the minimal spanning tree of the observed data The theoretical development initially carried out on R(2) is applicable to higher dimensional spaces. The results are experimentally verified on bounded sets with different types of distributions. The behaviour of the estimator in the case of the unbounded set as in that for Gaussian density is also experimentally seen to be good. Some applications of the proposed density estimation technique is demonstrated. One application is the representative point detection algorithm, which can be applied for data reduction and outlier rejection. Another application involves detection of border points of a dot pattern as well as finding a thinned version of the dot pattern. Copyright (C) 1996 Pattern Recognition Society. [References: 35]
机译:本文使用基于内核的方法处理概率密度估计,其中通过数据驱动程序找到内核的窗口大小。从理论上证明,在某些假设下,当从观察数据的最小生成树获得窗口宽度时,有界集合上的估计密度可以渐近无偏。最初在R(2)上进行的理论发展适用于高维空间。结果在具有不同分布类型的有界集上进行了实验验证。从实验上还可以看出,在无边界集合的情况下,估计器的行为(如高斯密度)是好的。证明了所提出的密度估计技术的一些应用。一种应用是代表点检测算法,该算法可用于数据缩减和离群值剔除。另一应用涉及检测点图案的边界点以及找到点图案的变薄版本。版权所有(C)1996模式识别学会。 [参考:35]

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