Automated News Suggestions for Populating Wikipedia Entity Pages

Research output: Chapter in book/report/conference proceedingConference contributionResearch

Authors

  • Besnik Fetahu
  • Katja Markert
  • Avishek Anand

Research Organisations

External Research Organisations

  • University of Leeds
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Details

Original languageEnglish
Title of host publicationCIKM '15: Proceedings of the 24th ACM International on Conference on Information and Knowledge Management
Publication statusPublished - 2015
EventThe 24th ACM International Conference on Information and Knowledge Management - Melbourne, Australia
Duration: 19 Oct 201523 Oct 2015
Conference number: 24

Abstract

Wikipedia entity pages are a valuable source of information for direct consumption and for knowledge-base construction, update and maintenance. Facts in these entity pages are typically supported by references. Recent studies show that as much as 20\% of the references are from online news sources. However, many entity pages are incomplete even if relevant information is already available in existing news articles. Even for the already present references, there is often a delay between the news article publication time and the reference time. In this work, we therefore look at Wikipedia through the lens of news and propose a novel news-article suggestion task to improve news coverage in Wikipedia, and reduce the lag of newsworthy references. Our work finds direct application, as a precursor, to Wikipedia page generation and knowledge-base acceleration tasks that rely on relevant and high quality input sources. We propose a two-stage supervised approach for suggesting news articles to entity pages for a given state of Wikipedia. First, we suggest news articles to Wikipedia entities (article-entity placement) relying on a rich set of features which take into account the \emph{salience} and \emph{relative authority} of entities, and the \emph{novelty} of news articles to entity pages. Second, we determine the exact section in the entity page for the input article (article-section placement) guided by class-based section templates. We perform an extensive evaluation of our approach based on ground-truth data that is extracted from external references in Wikipedia. We achieve a high precision value of up to 93\% in the \emph{article-entity} suggestion stage and upto 84\% for the \emph{article-section placement}. Finally, we compare our approach against competitive baselines and show significant improvements.

Keywords

    cs.IR, cs.CL, cs.SI

Cite this

Automated News Suggestions for Populating Wikipedia Entity Pages. / Fetahu, Besnik; Markert, Katja; Anand, Avishek.
CIKM '15: Proceedings of the 24th ACM International on Conference on Information and Knowledge Management. 2015.

Research output: Chapter in book/report/conference proceedingConference contributionResearch

Fetahu, B, Markert, K & Anand, A 2015, Automated News Suggestions for Populating Wikipedia Entity Pages. in CIKM '15: Proceedings of the 24th ACM International on Conference on Information and Knowledge Management. The 24th ACM International Conference on Information and Knowledge Management , Melbourne, Australia, 19 Oct 2015. https://doi.org/10.1145/2806416.2806531
Fetahu, B., Markert, K., & Anand, A. (2015). Automated News Suggestions for Populating Wikipedia Entity Pages. In CIKM '15: Proceedings of the 24th ACM International on Conference on Information and Knowledge Management https://doi.org/10.1145/2806416.2806531
Fetahu B, Markert K, Anand A. Automated News Suggestions for Populating Wikipedia Entity Pages. In CIKM '15: Proceedings of the 24th ACM International on Conference on Information and Knowledge Management. 2015 doi: 10.1145/2806416.2806531
Fetahu, Besnik ; Markert, Katja ; Anand, Avishek. / Automated News Suggestions for Populating Wikipedia Entity Pages. CIKM '15: Proceedings of the 24th ACM International on Conference on Information and Knowledge Management. 2015.
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title = "Automated News Suggestions for Populating Wikipedia Entity Pages",
abstract = " Wikipedia entity pages are a valuable source of information for direct consumption and for knowledge-base construction, update and maintenance. Facts in these entity pages are typically supported by references. Recent studies show that as much as 20\% of the references are from online news sources. However, many entity pages are incomplete even if relevant information is already available in existing news articles. Even for the already present references, there is often a delay between the news article publication time and the reference time. In this work, we therefore look at Wikipedia through the lens of news and propose a novel news-article suggestion task to improve news coverage in Wikipedia, and reduce the lag of newsworthy references. Our work finds direct application, as a precursor, to Wikipedia page generation and knowledge-base acceleration tasks that rely on relevant and high quality input sources. We propose a two-stage supervised approach for suggesting news articles to entity pages for a given state of Wikipedia. First, we suggest news articles to Wikipedia entities (article-entity placement) relying on a rich set of features which take into account the \emph{salience} and \emph{relative authority} of entities, and the \emph{novelty} of news articles to entity pages. Second, we determine the exact section in the entity page for the input article (article-section placement) guided by class-based section templates. We perform an extensive evaluation of our approach based on ground-truth data that is extracted from external references in Wikipedia. We achieve a high precision value of up to 93\% in the \emph{article-entity} suggestion stage and upto 84\% for the \emph{article-section placement}. Finally, we compare our approach against competitive baselines and show significant improvements. ",
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Download

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AU - Markert, Katja

AU - Anand, Avishek

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PY - 2015

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N2 - Wikipedia entity pages are a valuable source of information for direct consumption and for knowledge-base construction, update and maintenance. Facts in these entity pages are typically supported by references. Recent studies show that as much as 20\% of the references are from online news sources. However, many entity pages are incomplete even if relevant information is already available in existing news articles. Even for the already present references, there is often a delay between the news article publication time and the reference time. In this work, we therefore look at Wikipedia through the lens of news and propose a novel news-article suggestion task to improve news coverage in Wikipedia, and reduce the lag of newsworthy references. Our work finds direct application, as a precursor, to Wikipedia page generation and knowledge-base acceleration tasks that rely on relevant and high quality input sources. We propose a two-stage supervised approach for suggesting news articles to entity pages for a given state of Wikipedia. First, we suggest news articles to Wikipedia entities (article-entity placement) relying on a rich set of features which take into account the \emph{salience} and \emph{relative authority} of entities, and the \emph{novelty} of news articles to entity pages. Second, we determine the exact section in the entity page for the input article (article-section placement) guided by class-based section templates. We perform an extensive evaluation of our approach based on ground-truth data that is extracted from external references in Wikipedia. We achieve a high precision value of up to 93\% in the \emph{article-entity} suggestion stage and upto 84\% for the \emph{article-section placement}. Finally, we compare our approach against competitive baselines and show significant improvements.

AB - Wikipedia entity pages are a valuable source of information for direct consumption and for knowledge-base construction, update and maintenance. Facts in these entity pages are typically supported by references. Recent studies show that as much as 20\% of the references are from online news sources. However, many entity pages are incomplete even if relevant information is already available in existing news articles. Even for the already present references, there is often a delay between the news article publication time and the reference time. In this work, we therefore look at Wikipedia through the lens of news and propose a novel news-article suggestion task to improve news coverage in Wikipedia, and reduce the lag of newsworthy references. Our work finds direct application, as a precursor, to Wikipedia page generation and knowledge-base acceleration tasks that rely on relevant and high quality input sources. We propose a two-stage supervised approach for suggesting news articles to entity pages for a given state of Wikipedia. First, we suggest news articles to Wikipedia entities (article-entity placement) relying on a rich set of features which take into account the \emph{salience} and \emph{relative authority} of entities, and the \emph{novelty} of news articles to entity pages. Second, we determine the exact section in the entity page for the input article (article-section placement) guided by class-based section templates. We perform an extensive evaluation of our approach based on ground-truth data that is extracted from external references in Wikipedia. We achieve a high precision value of up to 93\% in the \emph{article-entity} suggestion stage and upto 84\% for the \emph{article-section placement}. Finally, we compare our approach against competitive baselines and show significant improvements.

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