Difference between revisions of "Using Dynamic Markov Compression to Detect Vandalism in the Wikipedia"

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{{Infobox work
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| title = Using Dynamic Markov Compression to Detect Vandalism in the Wikipedia
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| date = 2009
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| authors = [[Kelly Y. Itakura]]<br />[[Charles L. A. Clarke]]
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| doi = 10.1145/1571941.1572146
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| link = https://dl.acm.org/citation.cfm?id=1571941.1572146
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}}
 
'''Using Dynamic Markov Compression to Detect Vandalism in the Wikipedia''' - scientific work related to [[Wikipedia quality]] published in 2009, written by [[Kelly Y. Itakura]] and [[Charles L. A. Clarke]].
 
'''Using Dynamic Markov Compression to Detect Vandalism in the Wikipedia''' - scientific work related to [[Wikipedia quality]] published in 2009, written by [[Kelly Y. Itakura]] and [[Charles L. A. Clarke]].
  
 
== Overview ==
 
== Overview ==
 
Authors apply the Dynamic Markov Compression model to detect spam edits in the [[Wikipedia]]. The method appears to outperform previous efforts based on compression models, providing performance comparable to methods based on manually constructed rules.
 
Authors apply the Dynamic Markov Compression model to detect spam edits in the [[Wikipedia]]. The method appears to outperform previous efforts based on compression models, providing performance comparable to methods based on manually constructed rules.

Revision as of 13:04, 8 May 2020


Using Dynamic Markov Compression to Detect Vandalism in the Wikipedia
Authors
Kelly Y. Itakura
Charles L. A. Clarke
Publication date
2009
DOI
10.1145/1571941.1572146
Links
Original

Using Dynamic Markov Compression to Detect Vandalism in the Wikipedia - scientific work related to Wikipedia quality published in 2009, written by Kelly Y. Itakura and Charles L. A. Clarke.

Overview

Authors apply the Dynamic Markov Compression model to detect spam edits in the Wikipedia. The method appears to outperform previous efforts based on compression models, providing performance comparable to methods based on manually constructed rules.