How much is Wikipedia Lagging Behind News?

Publikation: Beitrag in Buch/Bericht/Sammelwerk/KonferenzbandAufsatz in KonferenzbandForschung

Autoren

  • Besnik Fetahu
  • Abhijit Anand
  • Avishek Anand

Organisationseinheiten

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Details

OriginalspracheEnglisch
Titel des SammelwerksWebSci '15: Proceedings of the ACM Web Science Conference
ISBN (elektronisch)9781450336727
PublikationsstatusVeröffentlicht - 2017
Veranstaltung7th ACM Web Science Conference 2015 - Oxford, Großbritannien / Vereinigtes Königreich
Dauer: 28 Juni 20151 Juli 2015
Konferenznummer: 7

Abstract

Wikipedia, rich in entities and events, is an invaluable resource for various knowledge harvesting, extraction and mining tasks. Numerous resources like DBpedia, YAGO and other knowledge bases are based on extracting entity and event based knowledge from it. Online news, on the other hand, is an authoritative and rich source for emerging entities, events and facts relating to existing entities. In this work, we study the creation of entities in Wikipedia with respect to news by studying how entity and event based information flows from news to Wikipedia. We analyze the lag of Wikipedia (based on the revision history of the English Wikipedia) with 20 years of \emph{The New York Times} dataset (NYT). We model and analyze the lag of entities and events, namely their first appearance in Wikipedia and in NYT, respectively. In our extensive experimental analysis, we find that almost 20\% of the external references in entity pages are news articles encoding the importance of news to Wikipedia. Second, we observe that the entity-based lag follows a normal distribution with a high standard deviation, whereas the lag for news-based events is typically very low. Finally, we find that events are responsible for creation of emergent entities with as many as 12\% of the entities mentioned in the event page are created after the creation of the event page.

ASJC Scopus Sachgebiete

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How much is Wikipedia Lagging Behind News? / Fetahu, Besnik; Anand, Abhijit; Anand, Avishek.
WebSci '15: Proceedings of the ACM Web Science Conference. 2017.

Publikation: Beitrag in Buch/Bericht/Sammelwerk/KonferenzbandAufsatz in KonferenzbandForschung

Fetahu, B, Anand, A & Anand, A 2017, How much is Wikipedia Lagging Behind News? in WebSci '15: Proceedings of the ACM Web Science Conference. 7th ACM Web Science Conference 2015, Oxford, Großbritannien / Vereinigtes Königreich, 28 Juni 2015. https://doi.org/10.1145/2786451.2786460
Fetahu, B., Anand, A., & Anand, A. (2017). How much is Wikipedia Lagging Behind News? In WebSci '15: Proceedings of the ACM Web Science Conference https://doi.org/10.1145/2786451.2786460
Fetahu B, Anand A, Anand A. How much is Wikipedia Lagging Behind News? in WebSci '15: Proceedings of the ACM Web Science Conference. 2017 doi: 10.1145/2786451.2786460
Fetahu, Besnik ; Anand, Abhijit ; Anand, Avishek. / How much is Wikipedia Lagging Behind News?. WebSci '15: Proceedings of the ACM Web Science Conference. 2017.
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title = "How much is Wikipedia Lagging Behind News?",
abstract = " Wikipedia, rich in entities and events, is an invaluable resource for various knowledge harvesting, extraction and mining tasks. Numerous resources like DBpedia, YAGO and other knowledge bases are based on extracting entity and event based knowledge from it. Online news, on the other hand, is an authoritative and rich source for emerging entities, events and facts relating to existing entities. In this work, we study the creation of entities in Wikipedia with respect to news by studying how entity and event based information flows from news to Wikipedia. We analyze the lag of Wikipedia (based on the revision history of the English Wikipedia) with 20 years of \emph{The New York Times} dataset (NYT). We model and analyze the lag of entities and events, namely their first appearance in Wikipedia and in NYT, respectively. In our extensive experimental analysis, we find that almost 20\% of the external references in entity pages are news articles encoding the importance of news to Wikipedia. Second, we observe that the entity-based lag follows a normal distribution with a high standard deviation, whereas the lag for news-based events is typically very low. Finally, we find that events are responsible for creation of emergent entities with as many as 12\% of the entities mentioned in the event page are created after the creation of the event page. ",
keywords = "cs.IR, Entity lag, Emergent entity density, Event lag, News reference density, News corpora, Wikipedia",
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AU - Anand, Abhijit

AU - Anand, Avishek

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N2 - Wikipedia, rich in entities and events, is an invaluable resource for various knowledge harvesting, extraction and mining tasks. Numerous resources like DBpedia, YAGO and other knowledge bases are based on extracting entity and event based knowledge from it. Online news, on the other hand, is an authoritative and rich source for emerging entities, events and facts relating to existing entities. In this work, we study the creation of entities in Wikipedia with respect to news by studying how entity and event based information flows from news to Wikipedia. We analyze the lag of Wikipedia (based on the revision history of the English Wikipedia) with 20 years of \emph{The New York Times} dataset (NYT). We model and analyze the lag of entities and events, namely their first appearance in Wikipedia and in NYT, respectively. In our extensive experimental analysis, we find that almost 20\% of the external references in entity pages are news articles encoding the importance of news to Wikipedia. Second, we observe that the entity-based lag follows a normal distribution with a high standard deviation, whereas the lag for news-based events is typically very low. Finally, we find that events are responsible for creation of emergent entities with as many as 12\% of the entities mentioned in the event page are created after the creation of the event page.

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