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Neural Entity Linking: A Survey of Models Based on Deep Learning

Authors :
Sevgili, Ozge
Shelmanov, Artem
Arkhipov, Mikhail
Panchenko, Alexander
Biemann, Chris
Source :
Semantic Web, Vol. 13, Number 3, 2022
Publication Year :
2020

Abstract

This survey presents a comprehensive description of recent neural entity linking (EL) systems developed since 2015 as a result of the "deep learning revolution" in natural language processing. Its goal is to systemize design features of neural entity linking systems and compare their performance to the remarkable classic methods on common benchmarks. This work distills a generic architecture of a neural EL system and discusses its components, such as candidate generation, mention-context encoding, and entity ranking, summarizing prominent methods for each of them. The vast variety of modifications of this general architecture are grouped by several common themes: joint entity mention detection and disambiguation, models for global linking, domain-independent techniques including zero-shot and distant supervision methods, and cross-lingual approaches. Since many neural models take advantage of entity and mention/context embeddings to represent their meaning, this work also overviews prominent entity embedding techniques. Finally, the survey touches on applications of entity linking, focusing on the recently emerged use-case of enhancing deep pre-trained masked language models based on the Transformer architecture.<br />Comment: Published in Semantic Web journal

Details

Database :
arXiv
Journal :
Semantic Web, Vol. 13, Number 3, 2022
Publication Type :
Report
Accession number :
edsarx.2006.00575
Document Type :
Working Paper
Full Text :
https://doi.org/10.3233/SW-222986