Open Information Extraction
Open Information Extraction (OIE) aims to automatically extract structured factual information, typically in the form of subject-relation-object triples, from unstructured text regardless of domain. Current research emphasizes improving accuracy and efficiency through various approaches, including rule-based systems, neural networks leveraging pre-trained language models (PLMs) and techniques inspired by object detection in computer vision, often incorporating linguistic features like part-of-speech tags and dependency parses. The field is crucial for building large-scale knowledge graphs, enhancing question answering systems, and improving various downstream NLP tasks, with ongoing efforts focused on addressing challenges like data bias, handling multilingual text, and ensuring robustness across diverse domains.
Papers
Leveraging Open Information Extraction for More Robust Domain Transfer of Event Trigger Detection
David Dukić, Kiril Gashteovski, Goran Glavaš, Jan Šnajder
Preserving Knowledge Invariance: Rethinking Robustness Evaluation of Open Information Extraction
Ji Qi, Chuchun Zhang, Xiaozhi Wang, Kaisheng Zeng, Jifan Yu, Jinxin Liu, Jiuding Sun, Yuxiang Chen, Lei Hou, Juanzi Li, Bin Xu