4.7 Article

Label Propagation on K-Partite Graphs with Heterophily

期刊

出版社

IEEE COMPUTER SOC
DOI: 10.1109/TKDE.2019.2937493

关键词

Label propagation; K-partite graph; hetergeneous graphs

资金

  1. Special Fund for Shanghai Industrial Transformation and Upgrading, Shanghai Municipal Commission of Economy and Informatization [18XI-05]
  2. NSF [CNS-1461963]
  3. USC Integrated Media Systems Center (IMSC)

向作者/读者索取更多资源

This paper studies label propagation in heterogeneous graphs under heterophily assumption for the first time, proposing a K-partite label propagation model to handle the combination of heterogeneous nodes/relations and heterophily propagation. The novel label inference algorithm framework with update rules in near-linear time complexity and incremental approach for updates have been verified for effectiveness and efficiency through extensive experiments on real datasets, showing superiority over existing label propagation methods.
In this paper, for the first time, we study label propagation in heterogeneous graphs under heterophily assumption. Homophily label propagation (i.e., two connected nodes share similar labels) in homogeneous graph (with same types of vertices and relations) has been extensively studied before. Unfortunately, real-life networks (e.g., social networks) are heterogeneous, they contain different types of vertices (e.g., users, images, and texts) and relations (e.g., friendships and co-tagging) and allow for each node to propagate both the same and opposite copy of labels to its neighbors. We propose a K-partite label propagation model to handle the mystifying combination of heterogeneous nodes/relations and heterophily propagation. With this model, we develop a novel label inference algorithm framework with update rules in near-linear time complexity. Since real networks change over time, we devise an incremental approach, which supports fast updates for both new data and evidence (e.g., ground truth labels) with guaranteed efficiency. We further provide a utility function to automatically determine whether an incremental or a re-modeling approach is favored. Extensive experiments on real datasets have verified the effectiveness and efficiency of our approach, and its superiority over the state-of-the-art label propagation methods.

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