Named Entity Recognition
Named Entity Recognition (NER) is a natural language processing task focused on automatically identifying and classifying named entities (e.g., people, locations, organizations, medical terms) within text. Current research emphasizes improving NER performance in challenging scenarios, such as handling noisy text from OCR, low-resource languages, and domain-specific terminology, often leveraging large language models (LLMs) and transformer architectures alongside traditional methods like LSTMs and CRFs. The advancements in NER have significant implications for various applications, including clinical decision support, historical document analysis, and cyber-security threat detection, by enabling efficient extraction of structured information from unstructured text data.
Papers
MANER: Multi-Agent Neural Rearrangement Planning of Objects in Cluttered Environments
Vivek Gupta, Praphpreet Dhir, Jeegn Dani, Ahmed H. Qureshi
Enhancing Low Resource NER Using Assisting Language And Transfer Learning
Maithili Sabane, Aparna Ranade, Onkar Litake, Parth Patil, Raviraj Joshi, Dipali Kadam
Extrinsic Factors Affecting the Accuracy of Biomedical NER
Zhiyi Li, Shengjie Zhang, Yujie Song, Jungyeul Park
ContrastNER: Contrastive-based Prompt Tuning for Few-shot NER
Amirhossein Layegh, Amir H. Payberah, Ahmet Soylu, Dumitru Roman, Mihhail Matskin
E-NER: Evidential Deep Learning for Trustworthy Named Entity Recognition
Zhen Zhang, Mengting Hu, Shiwan Zhao, Minlie Huang, Haotian Wang, Lemao Liu, Zhirui Zhang, Zhe Liu, Bingzhe Wu
Automated Refugee Case Analysis: An NLP Pipeline for Supporting Legal Practitioners
Claire Barale, Michael Rovatsos, Nehal Bhuta
CoLaDa: A Collaborative Label Denoising Framework for Cross-lingual Named Entity Recognition
Tingting Ma, Qianhui Wu, Huiqiang Jiang, Börje F. Karlsson, Tiejun Zhao, Chin-Yew Lin