Few-shot Named Entity Recognition: definition, taxonomy and research directions

Author:

Moscato Vincenzo1,Postiglione Marco1,Sperlí Giancarlo1

Affiliation:

1. University of Naples Federico II, Italy

Abstract

Recent years have seen an exponential growth (+98% in 2022 w.r.t. the previous year) of the number of research papers in the few-shot learning field, which aims to train machine learning models with extremely limited available data. The research interest towards few-shot learning systems for Named Entity Recognition (NER) is thus at the same time increasing. NER consists in identifying mentions of pre-defined entities from unstructured text, and serves as a fundamental step in many downstream tasks, such as the construction of Knowledge Graphs, or Question Answering. The need for a NER system able to be trained with few-annotated examples comes in all its urgency in domains where the annotation process requires time, knowledge and expertise (e.g. healthcare, finance, legal), and in low-resource languages. In this survey, starting from a clear definition and description of the few-shot NER (FS-NER) problem, we take stock of the current state-of-the-art and propose a taxonomy which divides algorithms in two macro-categories according to the underlying mechanisms: model-centric and data-centric. For each category, we line-up works as a story to show how the field is moving towards new research directions. Eventually, techniques, limitations and key aspects are deeply analyzed to facilitate future studies.

Publisher

Association for Computing Machinery (ACM)

Subject

Artificial Intelligence,Theoretical Computer Science

Reference190 articles.

1. David Ifeoluwa Adelani , Michael  A. Hedderich , Dawei Zhu , Esther van den Berg, and Dietrich Klakow . 2020 . Distant Supervision and Noisy Label Learning for Low Resource Named Entity Recognition: A Study on Hausa and Yor \‘ub\’a. arXiv:2003.08370 [cs](March 2020). http://arxiv.org/abs/2003.08370 arXiv: 2003.08370. David Ifeoluwa Adelani, Michael A. Hedderich, Dawei Zhu, Esther van den Berg, and Dietrich Klakow. 2020. Distant Supervision and Noisy Label Learning for Low Resource Named Entity Recognition: A Study on Hausa and Yor\‘ub\’a. arXiv:2003.08370 [cs](March 2020). http://arxiv.org/abs/2003.08370 arXiv: 2003.08370.

2. Named Entity Extraction for Knowledge Graphs: A Literature Overview

3. Diego Mollá Aliod M. Zaanen and Daniel Smith. 2006. Named Entity Recognition for Question Answering. In ALTA. Diego Mollá Aliod M. Zaanen and Daniel Smith. 2006. Named Entity Recognition for Question Answering. In ALTA.

4. The Power of Localization for Efficiently Learning Linear Separators with Noise

5. Dominic Balasuriya , Nicky Ringland , Joel Nothman , Tara Murphy , and James  R. Curran . 2009 . Named Entity Recognition in Wikipedia . In Proceedings of the 1st 2009 Workshop on The People’s Web Meets NLP: Collaboratively Constructed Semantic Resources@IJCNLP 2009 , Suntec, Singapore , August 7, 2009, Iryna Gurevych and Torsten Zesch (Eds.). Association for Computational Linguistics, 10–18. https://aclanthology.org/W09-3302/ Dominic Balasuriya, Nicky Ringland, Joel Nothman, Tara Murphy, and James R. Curran. 2009. Named Entity Recognition in Wikipedia. In Proceedings of the 1st 2009 Workshop on The People’s Web Meets NLP: Collaboratively Constructed Semantic Resources@IJCNLP 2009, Suntec, Singapore, August 7, 2009, Iryna Gurevych and Torsten Zesch (Eds.). Association for Computational Linguistics, 10–18. https://aclanthology.org/W09-3302/

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