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Multivariate PDF matching via kernel density estimation

机译:通过核密度估计进行多变量PDF匹配

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摘要

In this work, a measure of similarity based on the matching of multivariate probability density functions (PDFs) is proposed. In consonance with the information theoretic learning (ITL) framework, the affinity comparison between the joint PDFs is performed using a quadratic distance, estimated with the aid of the Parzen window method with Gaussian kernels. The motivation underlying this proposal is to introduce a criterion capable of quantifying, to a significant extent, the statistical dependence present on information sources endowed with temporal and/or spatial structure, like audio, images and coded data. The measure is analyzed and compared with the canonical ITL-based approach - correntropy - for a set of blind equalization scenarios. The comparison includes elements like surface analysis, performance comparison in terms of bit error rate and a qualitative discussion concerning image processing. It is also important to remark that the study includes the application of two computational intelligence paradigms: extreme learning machines and differential evolution. The results indicate that the proposal can be, in some scenarios, a more informative formulation than correntropy.
机译:在这项工作中,提出了一种基于多元概率密度函数(PDF)匹配的相似性度量。与信息理论学习(ITL)框架相一致,联合PDF之间的亲和力比较是使用二次距离进行的,该二次距离借助具有高斯核的Parzen窗方法进行了估计。该提议的动机是引入一种能够在很大程度上量化对具有时间和/或空间结构的信息源(如音频,图像和编码数据)存在的统计依赖性的标准。针对一组盲均衡方案,对该度量进行了分析,并与基于ITL的规范方法-熵-进行了比较。比较包括表面分析,在误码率方面的性能比较以及有关图像处理的定性讨论等元素。同样重要的是要指出,该研究包括两种计算智能范式的应用:极限学习机和差分进化。结果表明,在某些情况下,该建议可以比肾上腺皮质激素提供更多信息。

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