JRC-Names: A freely available, highly multilingual named entity resource
Ralf Steinberger, Bruno Pouliquen, Mijail Kabadjov, Erik van der Goot

TL;DR
This paper introduces JRC-Names, a comprehensive, multilingual named entity resource derived from news analysis and Wikipedia mining, supporting various NLP applications with daily updates.
Contribution
The paper presents a large-scale, multilingual named entity resource with detailed creation methodology, extensive coverage, and ongoing updates, enhancing NLP tasks like search, recognition, and translation.
Findings
Contains 205,000 person and organization names
Includes spelling variants in over 20 scripts and many languages
Supports daily updates for continuous relevance
Abstract
This paper describes a new, freely available, highly multilingual named entity resource for person and organisation names that has been compiled over seven years of large-scale multilingual news analysis combined with Wikipedia mining, resulting in 205,000 per-son and organisation names plus about the same number of spelling variants written in over 20 different scripts and in many more languages. This resource, produced as part of the Europe Media Monitor activity (EMM, http://emm.newsbrief.eu/overview.html), can be used for a number of purposes. These include improving name search in databases or on the internet, seeding machine learning systems to learn named entity recognition rules, improve machine translation results, and more. We describe here how this resource was created; we give statistics on its current size; we address the issue of morphological inflection; and we give…
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Taxonomy
TopicsTopic Modeling · Natural Language Processing Techniques · Biomedical Text Mining and Ontologies
