Relation Extraction
Relation extraction, a core natural language processing task, aims to identify and classify relationships between entities within text. Current research heavily focuses on improving the robustness and efficiency of relation extraction models, particularly using transformer-based architectures like BERT and LLMs, often incorporating techniques like attention mechanisms, graph convolutional networks, and retrieval-augmented generation to handle complex scenarios such as long sentences, ambiguous relations, and low-resource settings. These advancements are crucial for building knowledge graphs, powering information retrieval systems, and enabling more sophisticated applications in diverse fields like biomedical research and document understanding.
Papers
Relation Extraction as Open-book Examination: Retrieval-enhanced Prompt Tuning
Xiang Chen, Lei Li, Ningyu Zhang, Chuanqi Tan, Fei Huang, Luo Si, Huajun Chen
A Dataset for N-ary Relation Extraction of Drug Combinations
Aryeh Tiktinsky, Vijay Viswanathan, Danna Niezni, Dana Meron Azagury, Yosi Shamay, Hillel Taub-Tabib, Tom Hope, Yoav Goldberg
HiURE: Hierarchical Exemplar Contrastive Learning for Unsupervised Relation Extraction
Xuming Hu, Shuliang Liu, Chenwei Zhang, Shu`ang Li, Lijie Wen, Philip S. Yu
Modeling Task Interactions in Document-Level Joint Entity and Relation Extraction
Liyan Xu, Jinho D. Choi
Decorate the Examples: A Simple Method of Prompt Design for Biomedical Relation Extraction
Hui-Syuan Yeh, Thomas Lavergne, Pierre Zweigenbaum
Recovering Patient Journeys: A Corpus of Biomedical Entities and Relations on Twitter (BEAR)
Amelie Wührl, Roman Klinger
A Masked Image Reconstruction Network for Document-level Relation Extraction
Liang Zhang, Yidong Cheng