Entity Representation
Entity representation focuses on creating effective numerical or symbolic descriptions of entities (objects, concepts, etc.) for use in machine learning models. Current research emphasizes developing sophisticated methods to integrate diverse data sources (text, images, relational databases) and leverage advanced architectures like graph convolutional networks, transformers, and Bayesian networks to capture complex relationships and improve the expressiveness of entity representations. This work is crucial for advancing numerous applications, including knowledge graph completion, relation extraction, entity linking, and various natural language processing tasks, by enabling more accurate and nuanced understanding of information.
Papers
RelBench: A Benchmark for Deep Learning on Relational Databases
Joshua Robinson, Rishabh Ranjan, Weihua Hu, Kexin Huang, Jiaqi Han, Alejandro Dobles, Matthias Fey, Jan E. Lenssen, Yiwen Yuan, Zecheng Zhang, Xinwei He, Jure Leskovec
LoginMEA: Local-to-Global Interaction Network for Multi-modal Entity Alignment
Taoyu Su, Xinghua Zhang, Jiawei Sheng, Zhenyu Zhang, Tingwen Liu