均匀化熵估计

Ziqiao Ao, Jinglai Li
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引用次数: 0

摘要

熵估计在信息论和统计科学中具有重要的应用价值。许多现有的熵估计器在维度上存在快速增长的估计偏差,使得它们不适合高维问题。在这项工作中,我们提出了一种基于变换的高维熵估计方法,该方法由以下两个主要成分组成。首先,通过修改基于k-NN的熵估计器,我们提出了一种新的估计器,它对接近均匀分布的样本具有较小的估计偏差。其次,我们设计了一个基于归一化流的映射,将样本推向均匀分布,并推导了原始样本和变换后样本的熵之间的关系。因此,一组给定样本的熵是通过首先将它们转换成均匀分布,然后将所提出的估计量应用于转换后的样本来估计的。通过数学实例和实际应用,将该方法的性能与几种现有的熵估计器进行了比较。
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Entropy Estimation via Uniformization
Entropy estimation is of practical importance in information theory and statistical science. Many existing entropy estimators suffer from fast growing estimation bias with respect to dimensionality, rendering them unsuitable for high-dimensional problems. In this work we propose a transform-based method for high-dimensional entropy estimation, which consists of the following two main ingredients. First by modifying the k-NN based entropy estimator, we propose a new estimator which enjoys small estimation bias for samples that are close to a uniform distribution. Second we design a normalizing flow based mapping that pushes samples toward a uniform distribution, and the relation between the entropy of the original samples and the transformed ones is also derived. As a result the entropy of a given set of samples is estimated by first transforming them toward a uniform distribution and then applying the proposed estimator to the transformed samples. The performance of the proposed method is compared against several existing entropy estimators, with both mathematical examples and real-world applications.
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