2019
DOI: 10.1002/mma.5858
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Bounds for Csiszár divergence and hybrid Zipf‐Mandelbrot entropy

Abstract: The purpose of this paper is to give a series of inequalities of the Jensen type and their applications for Csiszár divergence. By using these results, we give many estimations for hybrid Zipf-Mandelbrot entropy. KEYWORDSconvex functions, Csiszár divergence, hybrid Zipf-Mandelbrot entropy, Jensen's inequality, Slater's inequality MSC CLASSIFICATION 26D15; 94A17; 94A15 Math Meth Appl Sci. 2019;42:7411-7424. wileyonlinelibrary.com/journal/mma

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Cited by 11 publications
(1 citation statement)
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“…The law itself is a discrete probability distribution defined by its probability mass function pmfi;n,q,d=1i+qdHq,dn=pi, where n,0.1emq[)0,+,0.1emd>0 and Hq,dn=i=1n1i+qd. This law has various applications in linguistics, information sciences, economy (where it is known as the discrete Pareto law), and in ecological studies. Some recent results can be found for example in Adil Khan et al 9 and Jakšetić 10 . The Zipf‐Mandelbrot entropy is given by ZH,q,d=dHq,dni=1nlni+qi+qd+lnHq,dn, and the cumulative distribution function ( CDF ) is defined by Fni=Hq,diHq,dn,i=1,2,,n…”
Section: Applicationsmentioning
confidence: 99%
“…The law itself is a discrete probability distribution defined by its probability mass function pmfi;n,q,d=1i+qdHq,dn=pi, where n,0.1emq[)0,+,0.1emd>0 and Hq,dn=i=1n1i+qd. This law has various applications in linguistics, information sciences, economy (where it is known as the discrete Pareto law), and in ecological studies. Some recent results can be found for example in Adil Khan et al 9 and Jakšetić 10 . The Zipf‐Mandelbrot entropy is given by ZH,q,d=dHq,dni=1nlni+qi+qd+lnHq,dn, and the cumulative distribution function ( CDF ) is defined by Fni=Hq,diHq,dn,i=1,2,,n…”
Section: Applicationsmentioning
confidence: 99%