Title:
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A note on how Rényi entropy can create a spectrum of probabilistic merging operators (English) |
Author:
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Adamčík, Martin |
Language:
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English |
Journal:
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Kybernetika |
ISSN:
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0023-5954 (print) |
ISSN:
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1805-949X (online) |
Volume:
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55 |
Issue:
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4 |
Year:
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2019 |
Pages:
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605-617 |
Summary lang:
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English |
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Category:
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math |
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Summary:
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In this paper we present a result that relates merging of closed convex sets of discrete probability functions respectively by the squared Euclidean distance and the Kullback-Leibler divergence, using an inspiration from the Rényi entropy. While selecting the probability function with the highest Shannon entropy appears to be a convincingly justified way of representing a closed convex set of probability functions, the discussion on how to represent several closed convex sets of probability functions is still ongoing. The presented result provides a perspective on this discussion. Furthermore, for those who prefer the standard minimisation based on the squared Euclidean distance, it provides a connection to a probabilistic merging operator based on the Kullback-Leibler divergence, which is closely connected to the Shannon entropy. (English) |
Keyword:
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probabilistic merging |
Keyword:
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information geometry |
Keyword:
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Kullback–Leibler divergence |
Keyword:
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Rényi entropy |
MSC:
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52A99 |
MSC:
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52C99 |
idZBL:
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Zbl 07177906 |
idMR:
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MR4043538 |
DOI:
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10.14736/kyb-2019-4-0605 |
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Date available:
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2020-01-10T14:20:58Z |
Last updated:
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2020-04-02 |
Stable URL:
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http://hdl.handle.net/10338.dmlcz/147959 |
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Reference:
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