A Family of Chisini Mean Based Jensen-Shannon Divergence Kernels

P. Sharma, Gary Holness, Y. Markushin, N. Melikechi
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引用次数: 12

Abstract

Jensen-Shannon divergence is an effective method for measuring the distance between two probability distributions. When the difference between these two distributions is subtle, Jensen-Shannon divergence does not provide adequate separation to draw distinctions from subtly different distributions. We extend Jensen-Shannon divergence by reformulating it using alternate operators that provide different properties concerning robustness. Furthermore, we prove a number of important properties for this extension: the lower limits of its range, and its relationship to Shannon Entropy and Kullback-Leibler divergence. Finally, we propose a family of new kernels, based on Chisini mean Jensen-Shannon divergence, and demonstrate its utility in providing better SVM classification accuracy over RBF kernels for amino acid spectra. Because spectral methods capture phenomenon at subatomic levels, differences between complex compounds can often be subtle. While the impetus behind this work began with spectral data, the methods are generally applicable to domains where subtle differences are important.
一类基于Chisini均值的Jensen-Shannon散度核
Jensen-Shannon散度是测量两个概率分布之间距离的有效方法。当这两个分布之间的差异很细微时,Jensen-Shannon散度不能提供足够的分离来区分细微的不同分布。我们通过使用提供有关鲁棒性的不同性质的替代算子重新表述它来扩展Jensen-Shannon散度。进一步,我们证明了该扩展的一些重要性质:它的范围的下限,以及它与Shannon熵和Kullback-Leibler散度的关系。最后,我们提出了一组基于Chisini均值Jensen-Shannon散度的新核函数,并证明了它在氨基酸谱分类中比RBF核函数提供更好的SVM分类精度。因为光谱方法捕获亚原子水平的现象,所以复杂化合物之间的差异往往是微妙的。虽然这项工作背后的推动力始于光谱数据,但这些方法通常适用于细微差异很重要的领域。
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