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Title Fine-Grained Entity Linking
Authors Henry Rosales-Méndez, Aidan Hogan, Bárbara Poblete
Publication date August 2020
Abstract The Entity Linking (EL) task involves linking mentions of
entities in a text with their identifier in a Knowledge Base (KB) such as
Wikipedia, BabelNet, DBpedia, Freebase, Wikidata, YAGO, etc. Numerous
techniques have been proposed to address this task down through the years.
However, not all works adopt the same convention regarding the entities that
the EL task should target; for example, while some EL works target common
entities like "interview" appearing in the KB, others only target named
entities like "Michael Jackson". The lack of consensus on this issue
(and others) complicates research on the EL task; for example, how can the
performance of EL systems be evaluated and compared when systems may target
different types of entities? In this work, we first design a questionnaire
to understand what kinds of mentions and links the EL research community
believes should be targeted by the task. Based on these results we propose a
fine-grained categorization scheme for EL that distinguishes different types
of mentions and links. We propose a vocabulary extension that allows to
express such categories in EL benchmark datasets. We then relabel (subsets
of) three popular EL datasets according to our novel categorization scheme,
where we additionally discuss a tool used to semi-automate the labeling
process. We next present the performance results of five EL systems for
individual categories. We further extend EL systems with Word Sense
Disambiguation and Coreference Resolution components, creating initial
versions of what we call Fine-Grained Entity Linking (FEL) systems,
measuring the impact on performance per category. Finally, we propose a
configurable performance measure based on fuzzy sets that can be adapted for
different application scenarios Our results highlight a lack of consensus on
the goals of the EL task, show that the evaluated systems do indeed target
different entities, and further reveal some open challenges for the (F)EL
task regarding more complex forms of reference for entities.
Pages article 100600
Volume 65
Journal name Journal of Web Semantics
Publisher Elsevier Science (Amsterdam, The Netherlands)
Reference URL View reference page