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Wikipedia
Known as:
Wicipaedia
, Wikipeedea
, Critical reception of Wikipedia
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Wikipedia (/ˌwɪkᵻˈpiːdiə/ or /ˌwɪkiˈpiːdiə/ WIK-i-PEE-dee-ə) is a free online encyclopedia that allows its users to edit almost any article…
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50 relations
Android
Complexity theory and organizations
Computational linguistics
Death and the Internet
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Highly Cited
2017
Highly Cited
2017
Reading Wikipedia to Answer Open-Domain Questions
Danqi Chen
,
Adam Fisch
,
J. Weston
,
Antoine Bordes
Annual Meeting of the Association for…
2017
Corpus ID: 3618568
This paper proposes to tackle open-domain question answering using Wikipedia as the unique knowledge source: the answer to any…
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Review
2015
Review
2015
DBpedia - A large-scale, multilingual knowledge base extracted from Wikipedia
Jens Lehmann
,
Robert Isele
,
+8 authors
Christian Bizer
Semantic Web
2015
Corpus ID: 1181640
The DBpedia community project extracts structured, multilingual knowledge from Wikipedia and makes it freely available on the Web…
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Highly Cited
2014
Highly Cited
2014
Wikipedia
Sylvain Firer-Blaess
,
C. Fuchs
2014
Corpus ID: 46997949
The task of this article is to analyze the political economy of Wikipedia. We discuss the specifics of Wikipedia’s mode of…
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Highly Cited
2010
Highly Cited
2010
Open Information Extraction Using Wikipedia
Fei Wu
,
Daniel S. Weld
Annual Meeting of the Association for…
2010
Corpus ID: 15015161
Information-extraction (IE) systems seek to distill semantic relations from natural-language text, but most systems use…
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Highly Cited
2008
Highly Cited
2008
Learning to link with wikipedia
David N. Milne
,
I. Witten
International Conference on Information and…
2008
Corpus ID: 207170378
This paper describes how to automatically cross-reference documents with Wikipedia: the largest knowledge base ever known. It…
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Highly Cited
2008
Highly Cited
2008
Harnessing the wisdom of crowds in wikipedia: quality through coordination
A. Kittur
,
R. Kraut
Conference on Computer Supported Cooperative Work
2008
Corpus ID: 1184433
Wikipedia's success is often attributed to the large numbers of contributors who improve the accuracy, completeness and clarity…
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Highly Cited
2007
Highly Cited
2007
Computing Semantic Relatedness Using Wikipedia-based Explicit Semantic Analysis
E. Gabrilovich
,
Shaul Markovitch
International Joint Conference on Artificial…
2007
Corpus ID: 5291693
Computing semantic relatedness of natural language texts requires access to vast amounts of common-sense and domain-specific…
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Highly Cited
2007
Highly Cited
2007
Large-Scale Named Entity Disambiguation Based on Wikipedia Data
Silviu Cucerzan
Conference on Empirical Methods in Natural…
2007
Corpus ID: 7577640
This paper presents a large-scale system for the recognition and semantic disambiguation of named entities based on information…
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Highly Cited
2007
Highly Cited
2007
He says, she says: conflict and coordination in Wikipedia
A. Kittur
,
B. Suh
,
Bryan A. Pendleton
,
Ed H. Chi
International Conference on Human Factors in…
2007
Corpus ID: 17493296
Wikipedia, a wiki-based encyclopedia, has become one of the most successful experiments in collaborative knowledge building on…
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Highly Cited
2006
Highly Cited
2006
WikiRelate! Computing Semantic Relatedness Using Wikipedia
M. Strube
,
Simone Paolo Ponzetto
AAAI Conference on Artificial Intelligence
2006
Corpus ID: 14317331
Wikipedia provides a knowledge base for computing word relatedness in a more structured fashion than a search engine and with…
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