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Main Author: Varley, Thomas F.
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2601.08030
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author Varley, Thomas F.
author_facet Varley, Thomas F.
contents Extracting higher-order structures from multivariate data has become an area of intensive study in complex systems science, as these multipartite interactions can reveal insights into fundamental features of complex systems like emergent phenomena. Information theory provides a natural language for exploring these interactions, as it elegantly formalizes the problem of comparing ``wholes" and ``parts" using joint, conditional, and marginal entropies. A large number of distinct statistics have been developed over the years, all aiming to capture different aspects of ``higher-order" information sharing. Here, we show that three of them (the dual total correlation, S-information, and O-information) are special cases of a more general function, $Δ^{k}$ which is parameterized by a free parameter $k$. For different values of $k$, we recover different measures: $Δ^{0}$ is equal to the S-information, $Δ^{1}$ is equal to the dual total correlation, and $Δ^{2}$ is equal to the negative O-information. Generally, the $Δ^{k}$ function is arranged into a hierarchy of increasingly high-order synergies; for a given value of $k$, if $Δ^{k}>0$, then the system is dominated by interactions with order greater than $k$, while if $Δ^{k}<0$, then the system is dominated by interactions with order lower than $k$. $Δ^{k}=0$ if the system is composed entirely of synergies of order-k. Using the entropic conjugation framework, we also find that the conjugate of $Δ^{k}$, which we term $Γ^{k}$ is arranged into a similar hierarchy of increasingly high-order redundancies. These results provide new insights into the nature of both higher-order redundant and synergistic interactions, and helps unify the existing zoo of measures into a more coherent structure.
format Preprint
id arxiv_https___arxiv_org_abs_2601_08030
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle The many faces of multivariate information
Varley, Thomas F.
Information Theory
Extracting higher-order structures from multivariate data has become an area of intensive study in complex systems science, as these multipartite interactions can reveal insights into fundamental features of complex systems like emergent phenomena. Information theory provides a natural language for exploring these interactions, as it elegantly formalizes the problem of comparing ``wholes" and ``parts" using joint, conditional, and marginal entropies. A large number of distinct statistics have been developed over the years, all aiming to capture different aspects of ``higher-order" information sharing. Here, we show that three of them (the dual total correlation, S-information, and O-information) are special cases of a more general function, $Δ^{k}$ which is parameterized by a free parameter $k$. For different values of $k$, we recover different measures: $Δ^{0}$ is equal to the S-information, $Δ^{1}$ is equal to the dual total correlation, and $Δ^{2}$ is equal to the negative O-information. Generally, the $Δ^{k}$ function is arranged into a hierarchy of increasingly high-order synergies; for a given value of $k$, if $Δ^{k}>0$, then the system is dominated by interactions with order greater than $k$, while if $Δ^{k}<0$, then the system is dominated by interactions with order lower than $k$. $Δ^{k}=0$ if the system is composed entirely of synergies of order-k. Using the entropic conjugation framework, we also find that the conjugate of $Δ^{k}$, which we term $Γ^{k}$ is arranged into a similar hierarchy of increasingly high-order redundancies. These results provide new insights into the nature of both higher-order redundant and synergistic interactions, and helps unify the existing zoo of measures into a more coherent structure.
title The many faces of multivariate information
topic Information Theory
url https://arxiv.org/abs/2601.08030