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Generalised Measures of Multivariate Information Content
Authors:Conor Finn  Joseph T. Lizier
Affiliation:1.Centre for Complex Systems, The University of Sydney, Sydney NSW 2006, Australia;2.CSIRO Data61, Marsfield NSW 2122, Australia
Abstract:The entropy of a pair of random variables is commonly depicted using a Venn diagram. This representation is potentially misleading, however, since the multivariate mutual information can be negative. This paper presents new measures of multivariate information content that can be accurately depicted using Venn diagrams for any number of random variables. These measures complement the existing measures of multivariate mutual information and are constructed by considering the algebraic structure of information sharing. It is shown that the distinct ways in which a set of marginal observers can share their information with a non-observing third party corresponds to the elements of a free distributive lattice. The redundancy lattice from partial information decomposition is then subsequently and independently derived by combining the algebraic structures of joint and shared information content.
Keywords:information content   multivariate mutual information   information measures   information decomposition   synergy   redundancy
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