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首页> 外文期刊>IEEE signal processing letters >Jeffreys Centroids: A Closed-Form Expression for Positive Histograms and a Guaranteed Tight Approximation for Frequency Histograms
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Jeffreys Centroids: A Closed-Form Expression for Positive Histograms and a Guaranteed Tight Approximation for Frequency Histograms

机译:杰弗里斯质心:正直方图的闭式表达式和频率直方图的保证紧逼近

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摘要

Due to the success of the bag-of-word modeling paradigm, clustering histograms has become an important ingredient of modern information processing. Clustering histograms can be performed using the celebrated $k$-means centroid-based algorithm. From the viewpoint of applications, it is usually required to deal with symmetric distances. In this letter, we consider the Jeffreys divergence that symmetrizes the Kullback–Leibler divergence, and investigate the computation of Jeffreys centroids. We first prove that the Jeffreys centroid can be expressed analytically using the Lambert $W$ function for positive histograms. We then show how to obtain a fast guaranteed approximation when dealing with frequency histograms. Finally, we conclude with some remarks on the $k$-means histogram clustering.
机译:由于词袋建模范例的成功,对直方图进行聚类已成为现代信息处理的重要组成部分。可以使用著名的 $ k $ -基于质心的算法来执行聚类直方图。从应用的角度来看,通常需要处理对称距离。在这封信中,我们考虑对称化Kullback-Leibler散度的Jeffreys散度,并研究Jeffreys重心的计算。我们首先证明,对于正直方图,可以使用Lambert $ W $ 函数以解析方式表示Jeffreys重心。然后,我们说明在处理频率直方图时如何获得快速保证的近似值。最后,我们对 $ k $ -直方图聚类进行一些总结。

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