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Discovering filter keywords for company name disambiguation in twitter

journal contribution
posted on 2024-11-02, 08:53 authored by Damiano SpinaDamiano Spina, Julio Gonzalo, Enrique Amigó
A major problem in monitoring the online reputation of companies, brands, and other entities is that entity names are often ambiguous (apple may refer to the company, the fruit, the sin ger, etc.). The prob- lem is particularly hard in microblogging services such as Twitter, where texts are very short and there is little context to disambiguate.In this paper we address the filtering task of determining, out of a set of tweets that contain a company name, which ones do refer to the company.Our approach relies on the identification of filter keywords : those whose presence in a tweet reliably confirm(positive keywords) or discard (negative keywords) that the tweet refers to the company. We describe an algorithm to extract filter keywords that does not use any previously annotated data about the target company. The algorithm allows to classify 58% of the tweets with 75% accuracy; and those can be used to feed a machine learning algorithm to obtain a complete classification of all tweets with an overall accuracy of 73%. In comparison, a 10-fold validation of the same machine learning algo- rithm provides an accuracy of 85%, i.e., our unsupervised algorithm has a 14% loss with respect to its supervised counterpart. Our study also shows that (i) filter keywords for Twitter does not directly derive from the public in for- mation about the company in the Web: a manual selection of keywords from relevant web sources only covers 15% of the tweets with 86% accuracy;(ii) filter keywords can indeed be a productive way of clas- sifying tweets: the five best possible keywords cover, in average,28% of the tweets for acompany inour test collection.

History

Journal

Expert Systems with Applications

Volume

40

Issue

12

Start page

4986

End page

5003

Total pages

18

Publisher

Elsevier

Place published

United Kingdom

Language

English

Copyright

© 2013 Elsevier Ltd. All rights reserved.

Former Identifier

2006089379

Esploro creation date

2020-06-22

Fedora creation date

2019-02-21

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