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      The Pseudo-Pascal Triangle of Maximum Deng Entropy

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      International Journal of Computers Communications & Control
      Agora University of Oradea

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          Abstract

          PPascal triangle (known as Yang Hui Triangle in Chinese) is an important model in mathematics while the entropy has been heavily studied in physics or as uncertainty measure in information science. How to construct the the connection between Pascal triangle and uncertainty measure is an interesting topic. One of the most used entropy, Tasllis entropy, has been modelled with Pascal triangle. But the relationship of the other entropy functions with Pascal triangle is still an open issue. Dempster-Shafer evidence theory takes the advantage to deal with uncertainty than probability theory since the probability distribution is generalized as basic probability assignment, which is more efficient to model and handle uncertain information. Given a basic probability assignment, its corresponding uncertainty measure can be determined by Deng entropy, which is the generalization of Shannon entropy. In this paper, a Pseudo-Pascal triangle based the maximum Deng entropy is constructed. Similar to the Pascal triangle modelling of Tasllis entropy, this work provides the a possible way of Deng entropy in physics and information theory.

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          Author and article information

          Journal
          International Journal of Computers Communications & Control
          INT J COMPUT COMMUN
          Agora University of Oradea
          1841-9844
          1841-9836
          February 03 2020
          February 03 2020
          : 15
          : 1
          Article
          10.15837/ijccc.2020.1.3735
          706eea69-11bf-470c-91e2-069d17430770
          © 2020

          http://creativecommons.org/licenses/by-nc/4.0

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