Companion Proceedings of the 2019 World Wide Web Conference 2019
DOI: 10.1145/3308560.3316752
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Inferring Advertiser Sentiment in Online Articles using Wikipedia Footnotes

Abstract: Online advertising platforms in partnerships with media companies typically have access to an online user's history of viewed articles. If a concerned brand (advertiser) plans to run advertisement campaigns on users exposed to negative articles, it is essential to first identify articles with negative sentiment about the brand. For an advertising platform, scalable identification of such articles with little human-annotation effort is necessary for launching campaigns soon after an advertiser signs up. In this… Show more

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Cited by 5 publications
(1 citation statement)
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“…Doc2Vec + Label Propagation: We use Doc2Vec (Le and Mikolov, 2014) to extract text representation and a traditional semi-supervised machine learning approach Label Propagation (LP) (Zhu and Ghahramani, 2002) to classify tweets. Such a method has been widely adopted on online content analysis (e.g., sentiment analysis (Mishra et al, 2019;Wadawadagi and Pagi, 2020)). As a semi-supervised machine learning approach, LP is used to assess the performance of the GCN framework, which is also a semi-supervised learning framework.…”
Section: A-spatial Baseline With Text Onlymentioning
confidence: 99%
“…Doc2Vec + Label Propagation: We use Doc2Vec (Le and Mikolov, 2014) to extract text representation and a traditional semi-supervised machine learning approach Label Propagation (LP) (Zhu and Ghahramani, 2002) to classify tweets. Such a method has been widely adopted on online content analysis (e.g., sentiment analysis (Mishra et al, 2019;Wadawadagi and Pagi, 2020)). As a semi-supervised machine learning approach, LP is used to assess the performance of the GCN framework, which is also a semi-supervised learning framework.…”
Section: A-spatial Baseline With Text Onlymentioning
confidence: 99%