Constructing re-substitution entropy estimator with discontinuous kernels

M. Zhang, Liyuan Xu, Su-juan Wang, Yulin He
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引用次数: 2

Abstract

Gaussian kernel is a continous kernel which is always used in the re-substitution entropy estimator (RSEE) to estimate the underlying entropy for the continuous random variable. Meanwhile, there are also some other discontinuous kernels that can be used to conduct the probability density function estimation and kernel regression analysis. The theoretical study indicates that some of these discontinuous kernels can obtain higher estimation efficiencies than Gaussian kernel. Thus, in this paper, we introduce six discontinuous kernels, i.e. Uniform, Triangular, Epanechnikov, Biweight, Triweight and Cosine, to establish the RESS. Firstly, we analyses mathematical properties of employed discontinuous kernels. Then, RESSs based discontinuous kernels are designed. Finally, extensive experiments are carried out to compare discontinuous kernels based RESSs with the Gaussian kernel based RESS in terms of estimation accuracy and stability. Experimental results show that discontinuous kernels can obtain better performances than Gaussian kernel.
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构造具有不连续核的重替换熵估计器
高斯核是一种连续核,常用于再替换熵估计器(RSEE)中对连续随机变量的底层熵进行估计。同时,还有一些其他的不连续核可以用来进行概率密度函数估计和核回归分析。理论研究表明,其中一些不连续核可以获得比高斯核更高的估计效率。因此,本文引入了均匀核、三角核、Epanechnikov核、双权核、三权核和余弦核等六个不连续核来建立RESS。首先,我们分析了所用不连续核的数学性质。然后,设计了基于RESSs的不连续核。最后,进行了大量的实验,比较了基于不连续核的RESS和基于高斯核的RESS在估计精度和稳定性方面的差异。实验结果表明,不连续核比高斯核具有更好的性能。
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