Assessing (im)balance in signed brain networks
Marzio Di Vece, Emanuele Agrimi, Samuele Tatullo, Tommaso Gili, Miguel Ib\'a\~nez-Berganza, Tiziano Squartini

TL;DR
This paper introduces a method to analyze signed brain networks by comparing multivariate time series to benchmarks using information theory, revealing insights into brain structure and balance.
Contribution
It proposes a novel hypothesis testing approach for inferring relationships in signed networks from time series data, applied to neuroscience.
Findings
Brain networks are often frustrated, especially in subcortical regions.
Negative subgraphs are majorly contributed by subcortical structures.
Brain modules align with the Relaxed Balance Theory.
Abstract
Many complex systems - be they financial, natural, or social - are composed of units - such as stocks, neurons, or agents - whose joint activity can be represented as a multivariate time series. An issue of both practical and theoretical importance concerns the possibility of inferring the presence of a static relationship between any two units solely from their dynamic state. The present contribution aims at tackling such an issue within the frame of traditional hypothesis testing: briefly speaking, our suggestion is that of linking any two units if behaving in a sufficiently similar way. To achieve such a goal, we project a multivariate time series onto a signed graph by i) comparing the empirical properties of the former with those expected under a suitable benchmark and ii) linking any two units with a positive (negative) edge in case the corresponding series shares a significantly…
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Taxonomy
TopicsNeural dynamics and brain function · Functional Brain Connectivity Studies · Complex Systems and Time Series Analysis
