Difference between revisions of "Interest Classification of Twitter Users Using Wikipedia"

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== Overview ==
 
== Overview ==
 
Authors present a framework for (automatically) classifying the relative interests of [[Twitter]] users using information from [[Wikipedia]]. Authors proposed framework first uses Wikipedia to automatically classify a user's celebrity followings into various interest [[categories]], followed by determining the relative interests of the user with a weighting compared to his/her other interests. Authors preliminary evaluation on Twitter shows that this framework is able to correctly classify users' interests and that these users frequently converse about topics that reflect both their (detected) interest and a related real-life event.
 
Authors present a framework for (automatically) classifying the relative interests of [[Twitter]] users using information from [[Wikipedia]]. Authors proposed framework first uses Wikipedia to automatically classify a user's celebrity followings into various interest [[categories]], followed by determining the relative interests of the user with a weighting compared to his/her other interests. Authors preliminary evaluation on Twitter shows that this framework is able to correctly classify users' interests and that these users frequently converse about topics that reflect both their (detected) interest and a related real-life event.
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=== Wikipedia Quality ===
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Lim, Kwan Hui; Datta, Amitava. (2013). "[[Interest Classification of Twitter Users Using Wikipedia]]".DOI: 10.1145/2491055.2491078.
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=== English Wikipedia ===
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{{cite journal |last1=Lim |first1=Kwan Hui |last2=Datta |first2=Amitava |title=Interest Classification of Twitter Users Using Wikipedia |date=2013 |doi=10.1145/2491055.2491078 |url=https://wikipediaquality.com/wiki/Interest_Classification_of_Twitter_Users_Using_Wikipedia}}
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=== HTML ===
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Lim, Kwan Hui; Datta, Amitava. (2013). &amp;quot;<a href="https://wikipediaquality.com/wiki/Interest_Classification_of_Twitter_Users_Using_Wikipedia">Interest Classification of Twitter Users Using Wikipedia</a>&amp;quot;.DOI: 10.1145/2491055.2491078.
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Revision as of 08:12, 15 April 2021


Interest Classification of Twitter Users Using Wikipedia
Authors
Kwan Hui Lim
Amitava Datta
Publication date
2013
DOI
10.1145/2491055.2491078
Links
Original

Interest Classification of Twitter Users Using Wikipedia - scientific work related to Wikipedia quality published in 2013, written by Kwan Hui Lim and Amitava Datta.

Overview

Authors present a framework for (automatically) classifying the relative interests of Twitter users using information from Wikipedia. Authors proposed framework first uses Wikipedia to automatically classify a user's celebrity followings into various interest categories, followed by determining the relative interests of the user with a weighting compared to his/her other interests. Authors preliminary evaluation on Twitter shows that this framework is able to correctly classify users' interests and that these users frequently converse about topics that reflect both their (detected) interest and a related real-life event.

Embed

Wikipedia Quality

Lim, Kwan Hui; Datta, Amitava. (2013). "[[Interest Classification of Twitter Users Using Wikipedia]]".DOI: 10.1145/2491055.2491078.

English Wikipedia

{{cite journal |last1=Lim |first1=Kwan Hui |last2=Datta |first2=Amitava |title=Interest Classification of Twitter Users Using Wikipedia |date=2013 |doi=10.1145/2491055.2491078 |url=https://wikipediaquality.com/wiki/Interest_Classification_of_Twitter_Users_Using_Wikipedia}}

HTML

Lim, Kwan Hui; Datta, Amitava. (2013). &quot;<a href="https://wikipediaquality.com/wiki/Interest_Classification_of_Twitter_Users_Using_Wikipedia">Interest Classification of Twitter Users Using Wikipedia</a>&quot;.DOI: 10.1145/2491055.2491078.