Difference between revisions of "Leveraging Wikipedia Concept and Category Information to Enhance Contextual Advertising"

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'''Leveraging Wikipedia Concept and Category Information to Enhance Contextual Advertising''' - scientific work related to Wikipedia quality published in 2011, written by Zongda Wu, Guandong Xu, Rong Pan, Yanchun Zhang, Zhiwen Hu and Jianfeng Lu.
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'''Leveraging Wikipedia Concept and Category Information to Enhance Contextual Advertising''' - scientific work related to [[Wikipedia quality]] published in 2011, written by [[Zongda Wu]], [[Guandong Xu]], [[Rong Pan]], [[Yanchun Zhang]], [[Zhiwen Hu]] and [[Jianfeng Lu]].
  
 
== Overview ==
 
== Overview ==
As a prevalent type of Web advertising, contextual advertising refers to the placement of the most relevant ads into a Web page, so as to increase the number of ad-clicks. However, some problems of homonymy and polysemy, low intersection of keywords etc., can lead to the selection of irrelevant ads for a page. In this paper, authors present a new contextual advertising approach to overcome the problems, which uses Wikipedia concept and category information to enrich the content representation of an ad (or a page). First, authors map each ad and page into a keyword vector, a concept vector and a category vector. Next, authors select the relevant ads for a given page based on a similarity metric that combines the above three feature vectors together. Last, authors evaluate approach by using real ads, pages, as well as a great number of concepts and categories of Wikipedia. Experimental results show that approach can improve the precision of ads-selection effectively.
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As a prevalent type of Web advertising, contextual advertising refers to the placement of the most relevant ads into a Web page, so as to increase the number of ad-clicks. However, some problems of homonymy and polysemy, low intersection of keywords etc., can lead to the selection of irrelevant ads for a page. In this paper, authors present a new contextual advertising approach to overcome the problems, which uses [[Wikipedia]] concept and category information to enrich the content representation of an ad (or a page). First, authors map each ad and page into a keyword vector, a concept vector and a category vector. Next, authors select the relevant ads for a given page based on a similarity metric that combines the above three feature vectors together. Last, authors evaluate approach by using real ads, pages, as well as a great number of concepts and [[categories]] of Wikipedia. Experimental results show that approach can improve the precision of ads-selection effectively.

Revision as of 09:38, 1 August 2019

Leveraging Wikipedia Concept and Category Information to Enhance Contextual Advertising - scientific work related to Wikipedia quality published in 2011, written by Zongda Wu, Guandong Xu, Rong Pan, Yanchun Zhang, Zhiwen Hu and Jianfeng Lu.

Overview

As a prevalent type of Web advertising, contextual advertising refers to the placement of the most relevant ads into a Web page, so as to increase the number of ad-clicks. However, some problems of homonymy and polysemy, low intersection of keywords etc., can lead to the selection of irrelevant ads for a page. In this paper, authors present a new contextual advertising approach to overcome the problems, which uses Wikipedia concept and category information to enrich the content representation of an ad (or a page). First, authors map each ad and page into a keyword vector, a concept vector and a category vector. Next, authors select the relevant ads for a given page based on a similarity metric that combines the above three feature vectors together. Last, authors evaluate approach by using real ads, pages, as well as a great number of concepts and categories of Wikipedia. Experimental results show that approach can improve the precision of ads-selection effectively.