Difference between revisions of "Finding Related Pages Using Green Measures: an Illustration with Wikipedia"
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== Overview == | == Overview == | ||
Authors introduce a new method for finding nodes semantically related to a given node in a hyperlinked graph: the Green method, based on a classical Markov chain tool. It is generic, adjustment-free and easy to implement. Authors test it in the case of the hyperlink structure of the English version of [[Wikipedia]], the on-line encyclopedia. Authors present an extensive comparative study of the performance of method versus several other classical methods in the case of Wikipedia. The Green method is found to have both the best average results and the best robustness. | Authors introduce a new method for finding nodes semantically related to a given node in a hyperlinked graph: the Green method, based on a classical Markov chain tool. It is generic, adjustment-free and easy to implement. Authors test it in the case of the hyperlink structure of the English version of [[Wikipedia]], the on-line encyclopedia. Authors present an extensive comparative study of the performance of method versus several other classical methods in the case of Wikipedia. The Green method is found to have both the best average results and the best robustness. | ||
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+ | == Embed == | ||
+ | === Wikipedia Quality === | ||
+ | <code> | ||
+ | <nowiki> | ||
+ | Ollivier, Yann; Senellart, Pierre. (2007). "[[Finding Related Pages Using Green Measures: an Illustration with Wikipedia]]". AAAI Press. | ||
+ | </nowiki> | ||
+ | </code> | ||
+ | |||
+ | === English Wikipedia === | ||
+ | <code> | ||
+ | <nowiki> | ||
+ | {{cite journal |last1=Ollivier |first1=Yann |last2=Senellart |first2=Pierre |title=Finding Related Pages Using Green Measures: an Illustration with Wikipedia |date=2007 |url=https://wikipediaquality.com/wiki/Finding_Related_Pages_Using_Green_Measures:_an_Illustration_with_Wikipedia |journal=AAAI Press}} | ||
+ | </nowiki> | ||
+ | </code> | ||
+ | |||
+ | === HTML === | ||
+ | <code> | ||
+ | <nowiki> | ||
+ | Ollivier, Yann; Senellart, Pierre. (2007). &quot;<a href="https://wikipediaquality.com/wiki/Finding_Related_Pages_Using_Green_Measures:_an_Illustration_with_Wikipedia">Finding Related Pages Using Green Measures: an Illustration with Wikipedia</a>&quot;. AAAI Press. | ||
+ | </nowiki> | ||
+ | </code> |
Revision as of 10:17, 19 March 2021
Authors | Yann Ollivier Pierre Senellart |
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Publication date | 2007 |
Links | Original |
Finding Related Pages Using Green Measures: an Illustration with Wikipedia - scientific work related to Wikipedia quality published in 2007, written by Yann Ollivier and Pierre Senellart.
Overview
Authors introduce a new method for finding nodes semantically related to a given node in a hyperlinked graph: the Green method, based on a classical Markov chain tool. It is generic, adjustment-free and easy to implement. Authors test it in the case of the hyperlink structure of the English version of Wikipedia, the on-line encyclopedia. Authors present an extensive comparative study of the performance of method versus several other classical methods in the case of Wikipedia. The Green method is found to have both the best average results and the best robustness.
Embed
Wikipedia Quality
Ollivier, Yann; Senellart, Pierre. (2007). "[[Finding Related Pages Using Green Measures: an Illustration with Wikipedia]]". AAAI Press.
English Wikipedia
{{cite journal |last1=Ollivier |first1=Yann |last2=Senellart |first2=Pierre |title=Finding Related Pages Using Green Measures: an Illustration with Wikipedia |date=2007 |url=https://wikipediaquality.com/wiki/Finding_Related_Pages_Using_Green_Measures:_an_Illustration_with_Wikipedia |journal=AAAI Press}}
HTML
Ollivier, Yann; Senellart, Pierre. (2007). "<a href="https://wikipediaquality.com/wiki/Finding_Related_Pages_Using_Green_Measures:_an_Illustration_with_Wikipedia">Finding Related Pages Using Green Measures: an Illustration with Wikipedia</a>". AAAI Press.