LGOct 10, 2025

Beyond Pairwise Connections: Extracting High-Order Functional Brain Network Structures under Global Constraints

arXiv:2510.09175v10.101 citationsh-index: 3Has Code
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This addresses the problem of capturing complex brain dependencies for cognitive neuroscience, offering a novel perspective with interdisciplinary applications.

The paper tackles the limitation of pairwise interactions in functional brain network modeling by proposing a framework that extracts high-order structures under global constraints, achieving up to 30.6% improvement in accuracy and 96.3% reduction in computational time across multiple datasets.

Functional brain network (FBN) modeling often relies on local pairwise interactions, whose limitation in capturing high-order dependencies is theoretically analyzed in this paper. Meanwhile, the computational burden and heuristic nature of current hypergraph modeling approaches hinder end-to-end learning of FBN structures directly from data distributions. To address this, we propose to extract high-order FBN structures under global constraints, and implement this as a Global Constraints oriented Multi-resolution (GCM) FBN structure learning framework. It incorporates 4 types of global constraint (signal synchronization, subject identity, expected edge numbers, and data labels) to enable learning FBN structures for 4 distinct levels (sample/subject/group/project) of modeling resolution. Experimental results demonstrate that GCM achieves up to a 30.6% improvement in relative accuracy and a 96.3% reduction in computational time across 5 datasets and 2 task settings, compared to 9 baselines and 10 state-of-the-art methods. Extensive experiments validate the contributions of individual components and highlight the interpretability of GCM. This work offers a novel perspective on FBN structure learning and provides a foundation for interdisciplinary applications in cognitive neuroscience. Code is publicly available on https://github.com/lzhan94swu/GCM.

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