Journal article
Divergence from, and convergence to, uniformity of probability density quantiles
RG Staudte, A Xia
Entropy | MDPI | Published : 2018
DOI: 10.3390/e20050317
Abstract
We demonstrate that questions of convergence and divergence regarding shapes of distributions can be carried out in a location- and scale-free environment. This environment is the class of probability density quantiles (pdQs), obtained by normalizing the composition of the density with the associated quantile function. It has earlier been shown that the pdQ is representative of a location-scale family and carries essential information regarding shape and tail behavior of the family. The class of pdQs are densities of continuous distributions with common domain, the unit interval, facilitating metric and semi-metric comparisons. The Kullback-Leibler divergences from uniformity of these pdQs a..
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Awarded by Australian Research Council
Funding Acknowledgements
The authors thank the three reviewers for their critiques and many positive suggestions. The authors also thank Peter J. Brockwell for helpful commentary on an earlier version of this manuscript. The research by Aihua Xia is supported by an Australian Research Council Discovery Grant DP150101459. The authors have not received funds for covering the costs to publish in open access.