One of the key requirements to facilitate the semantic analytics of information regarding contemporary and historical events on the Web, in the news and in social media is the availability of reference knowledge repositories containing comprehensive representations of events, entities and temporal relations.
Existing knowledge graphs, with popular examples including DBpedia, YAGO and Wikidata, focus mostly on entity-centric information and are insufficient in terms of their coverage and completeness with respect to events and temporal relations.
In this article we address this limitation,
formalise the concept of a temporal knowledge graph
and present its instantiation - EventKG. EventKG is a multilingual event-centric temporal knowledge graph that incorporates over 690 thousand events and over 2.3 million temporal relations obtained from several large-scale knowledge graphs and semi-structured sources and makes them available through a canonical RDF representation.
Whereas popular entities often possess hundreds of relations within a temporal knowledge graph such as EventKG, generating a concise overview of the most important temporal relations for a given entity is a challenging task.
In this article we demonstrate an application of EventKG to
biographical timeline generation, where we adopt a distant supervision method to identify relations most relevant for an entity biography.
Our evaluation results provide insights on the characteristics of EventKG
and demonstrate the effectiveness of the proposed biographical timeline generation method.
%0 Journal Article
%1 gottschalk2019eventkg
%A Gottschalk, Simon
%A Demidova, Elena
%D 2019
%J Semantic Web
%K alexandria cleopatra data4urbanmobility gottschalk multiling myown simple-ml
%T EventKG - the Hub of Event Knowledge on the Web - and Biographical Timeline Generation
%X One of the key requirements to facilitate the semantic analytics of information regarding contemporary and historical events on the Web, in the news and in social media is the availability of reference knowledge repositories containing comprehensive representations of events, entities and temporal relations.
Existing knowledge graphs, with popular examples including DBpedia, YAGO and Wikidata, focus mostly on entity-centric information and are insufficient in terms of their coverage and completeness with respect to events and temporal relations.
In this article we address this limitation,
formalise the concept of a temporal knowledge graph
and present its instantiation - EventKG. EventKG is a multilingual event-centric temporal knowledge graph that incorporates over 690 thousand events and over 2.3 million temporal relations obtained from several large-scale knowledge graphs and semi-structured sources and makes them available through a canonical RDF representation.
Whereas popular entities often possess hundreds of relations within a temporal knowledge graph such as EventKG, generating a concise overview of the most important temporal relations for a given entity is a challenging task.
In this article we demonstrate an application of EventKG to
biographical timeline generation, where we adopt a distant supervision method to identify relations most relevant for an entity biography.
Our evaluation results provide insights on the characteristics of EventKG
and demonstrate the effectiveness of the proposed biographical timeline generation method.
@article{gottschalk2019eventkg,
abstract = {One of the key requirements to facilitate the semantic analytics of information regarding contemporary and historical events on the Web, in the news and in social media is the availability of reference knowledge repositories containing comprehensive representations of events, entities and temporal relations.
Existing knowledge graphs, with popular examples including DBpedia, YAGO and Wikidata, focus mostly on entity-centric information and are insufficient in terms of their coverage and completeness with respect to events and temporal relations.
In this article we address this limitation,
formalise the concept of a temporal knowledge graph
and present its instantiation - EventKG. EventKG is a multilingual event-centric temporal knowledge graph that incorporates over 690 thousand events and over 2.3 million temporal relations obtained from several large-scale knowledge graphs and semi-structured sources and makes them available through a canonical RDF representation.
Whereas popular entities often possess hundreds of relations within a temporal knowledge graph such as EventKG, generating a concise overview of the most important temporal relations for a given entity is a challenging task.
In this article we demonstrate an application of EventKG to
biographical timeline generation, where we adopt a distant supervision method to identify relations most relevant for an entity biography.
Our evaluation results provide insights on the characteristics of EventKG
and demonstrate the effectiveness of the proposed biographical timeline generation method.},
added-at = {2019-02-24T20:05:23.000+0100},
author = {Gottschalk, Simon and Demidova, Elena},
biburl = {https://www.bibsonomy.org/bibtex/2887338e0ce207c1a0c8d580f25051e11/demidova},
interhash = {72aa39333580dc86d4f80f641ad8308d},
intrahash = {887338e0ce207c1a0c8d580f25051e11},
journal = {Semantic Web},
keywords = {alexandria cleopatra data4urbanmobility gottschalk multiling myown simple-ml},
timestamp = {2019-06-03T17:22:29.000+0200},
title = {EventKG - the Hub of Event Knowledge on the Web - and Biographical Timeline Generation},
year = 2019
}