NCCGLGSep 12, 2025

On a Geometry of Interbrain Networks

arXiv:2509.10650v21 citationsh-index: 1
Originality Highly original
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This work addresses the need for more explanatory frameworks in social neuroscience, offering a novel approach to improve hyperscanning methodologies.

The paper tackles the problem of analyzing interbrain synchrony in social neuroscience by proposing a geometric framework to interpret dynamic neural interactions, resulting in enhanced capacity to uncover underlying mechanisms in social behavior.

Effective analysis in neuroscience benefits significantly from robust conceptual frameworks. Traditional metrics of interbrain synchrony in social neuroscience typically depend on fixed, correlation-based approaches, restricting their explanatory capacity to descriptive observations. Inspired by the successful integration of geometric insights in network science, we propose leveraging discrete geometry to examine the dynamic reconfigurations in neural interactions during social exchanges. Unlike conventional synchrony approaches, our method interprets inter-brain connectivity changes through the evolving geometric structures of neural networks. This geometric framework is realized through a pipeline that identifies critical transitions in network connectivity using entropy metrics derived from curvature distributions. By doing so, we significantly enhance the capacity of hyperscanning methodologies to uncover underlying neural mechanisms in interactive social behavior.

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