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Cooperation of Experts: Fusing Heterogeneous Information with Large Margin

About

Fusing heterogeneous information remains a persistent challenge in modern data analysis. While significant progress has been made, existing approaches often fail to account for the inherent heterogeneity of object patterns across different semantic spaces. To address this limitation, we propose the Cooperation of Experts (CoE) framework, which encodes multi-typed information into unified heterogeneous multiplex networks. By overcoming modality and connection differences, CoE provides a powerful and flexible model for capturing the intricate structures of real-world complex data. In our framework, dedicated encoders act as domain-specific experts, each specializing in learning distinct relational patterns in specific semantic spaces. To enhance robustness and extract complementary knowledge, these experts collaborate through a novel large margin mechanism supported by a tailored optimization strategy. Rigorous theoretical analyses guarantee the framework's feasibility and stability, while extensive experiments across diverse benchmarks demonstrate its superior performance and broad applicability. Our code is available at https://github.com/strangeAlan/CoE.

Shuo Wang, Shunyang Huang, Jinghui Yuan, Zhixiang Shen, Zhao Kang• 2025

Related benchmarks

TaskDatasetResultRank
Node ClassificationACM
Accuracy94.21
47
Node ClassificationYelp
Accuracy93.4
35
Node ClassificationDBLP
Accuracy92.27
31
Multi-view ClassificationNUS
Accuracy66.8
26
Node ClassificationAMAZON
Accuracy98.01
14
Multimodal data classificationESP
Accuracy81.11
10
Multimodal data classificationFlickr
Accuracy70.24
10
Multimodal data classificationIAPR
Accuracy71.04
10
Node ClassificationMAG
Accuracy78.37
8
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