Link Prediction
Link prediction aims to forecast missing connections in networks by analyzing existing relationships and node attributes. Current research heavily involves graph neural networks (GNNs), but also explores alternative approaches like traditional machine learning models and diffusion probabilistic models, often enhanced with techniques such as contrastive learning and data augmentation to improve accuracy and address issues like heterophily and long-tailed distributions. This field is crucial for advancing knowledge graph completion, recommendation systems, and other applications requiring the inference of relationships between entities, with ongoing efforts focused on improving model interpretability and fairness.
Papers
Leveraging Multi-facet Paths for Heterogeneous Graph Representation Learning
JongWoo Kim, SeongYeub Chu, HyeongMin Park, Bryan Wong, MunYong Yi
Harvesting Textual and Structured Data from the HAL Publication Repository
Francis Kulumba, Wissam Antoun, Guillaume Vimont, Laurent Romary
Optimizing Long-tailed Link Prediction in Graph Neural Networks through Structure Representation Enhancement
Yakun Wang, Daixin Wang, Hongrui Liu, Binbin Hu, Yingcui Yan, Qiyang Zhang, Zhiqiang Zhang