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A novel approach to multivariate redundancy and synergy

Abstract

Consider a situation in which a set of nn "source" random variables X1,,XnX_{1},\dots,X_{n} have information about some "target" random variable YY. For example, in neuroscience YY might represent the state of an external stimulus and X1,,XnX_{1},\dots,X_{n} the activity of nn different brain regions. Recent work in information theory has considered how to decompose the information that the sources X1,,XnX_{1},\dots,X_{n} provide about the target YY into separate terms such as (1) the "redundant information" that is shared among all of sources, (2) the "unique information" that is provided only by a single source, (3) the "synergistic information" that is provided by all sources only when considered jointly, and (4) the "union information" that is provided by at least one source. We propose a novel framework deriving such a decomposition that can be applied to any number of sources. Our measures are motivated in three distinct ways: via a formal analogy to intersection and union operators in set theory, via a decision-theoretic operationalization based on Blackwell's theorem, and via an axiomatic derivation. A key aspect of our approach is that we relax the assumption that measures of redundancy and union information should be related by the inclusion-exclusion principle. We discuss relations to previous proposals as well as possible generalizations.

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