Authors
Anuj Sharma, Shubhamoy Dey
Publication date
2013/10/1
Conference
Proceedings of the 2013 Research in Adaptive and Convergent Systems
Pages
28-34
Publisher
ACM
Description
The opinionated text available on the Internet and Web 2.0 social media has created ample research opportunities related to mining and analyzing public sentiments. At the same time, the large volume of such data poses severe data processing and sentiment extraction related challenges. Different contemporary solutions based on machine learning, dictionary, statistical, and semantic based approaches have been proposed in literature for sentiment analysis of online user-generated data. Recent research studies have proved that supervised machine learning techniques like Naive Bayes (NB) and Support Vector Machines (SVM) are very effective for sentiment based classification of opinionated text. This paper proposes a hybrid sentiment classification model based on Boosted SVM. The proposed model exploits classification performance of two techniques (Boosting and SVM) applied for the task of sentiment …
Total citations
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Scholar articles
A Sharma, S Dey - Proceedings of the 2013 research in adaptive and …, 2013