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MvHo-IB: Multi-View Higher-Order Information Bottleneck for Brain Disorder Diagnosis

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Recent evidence suggests that modeling higher-order interactions (HOIs) in functional magnetic resonance imaging (fMRI) data can enhance the diagnostic accuracy of machine learning systems. However, effectively extracting and utilizing HOIs remains a significant challenge. In this work, we propose MvHo-IB, a novel multi-view learning framework that integrates both pairwise interactions and HOIs for diagnostic decision-making, while automatically compressing task-irrelevant redundant information. MvHo-IB introduces several key innovations: (1) a principled method that combines O-information from information theory with a matrix-based Renyi alpha-order entropy estimator to quantify and extract HOIs, (2) a purpose-built Brain3DCNN encoder to effectively utilize these interactions, and (3) a new multi-view learning information bottleneck objective to enhance representation learning. Experiments on three benchmark fMRI datasets demonstrate that MvHo-IB achieves state-of-the-art performance, significantly outperforming previous methods, including recent hypergraph-based techniques. The implementation of MvHo-IB is available at https://github.com/zky04/MvHo-IB.

Kunyu Zhang, Qiang Li, Shujian Yu• 2025

Related benchmarks

TaskDatasetResultRank
Brain Disorder ClassificationADNI Tenfold cross-validation
Accuracy73.23
18
Brain Disorder ClassificationUCLA (Tenfold cross-validation)
Accuracy83.12
9
Brain Disorder ClassificationEOEC (Tenfold cross-validation)
Accuracy82.13
9
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