Information Integration In Large Brain Networks
Daniel Toker, Friedrich T. Sommer

TL;DR
This paper introduces a spectral clustering method to efficiently estimate large-scale integrated information in brain networks, enabling practical analysis of complex neural data and supporting theories of network efficiency and modularity.
Contribution
It presents a novel spectral clustering approach to approximate integrated information, significantly reducing computational complexity for large brain networks.
Findings
Spectral clustering provides a robust approximation of the informational weakest link.
Application to macaque cortex data reveals posterior-anterior split in information integration.
Supports the hypothesis that high global efficiency maximizes information integration.
Abstract
An outstanding problem in neuroscience is to understand how information is integrated across the many modules of the brain. While classic information-theoretic measures have transformed our understanding of feedforward information processing in the brain's sensory periphery, comparable measures for information flow in the massively recurrent networks of the rest of the brain have been lacking. To address this, recent work in information theory has produced a sound measure of network-wide "integrated information," which can be estimated from time-series data. But, a computational hurdle has stymied attempts to measure large-scale information integration in real brains. Specifically, the measurement of integrated information involves a combinatorial search for the informational "weakest link" of a network, a process whose computation time explodes super-exponentially with network size.…
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Taxonomy
TopicsNeural dynamics and brain function · Functional Brain Connectivity Studies · Complex Systems and Time Series Analysis
