User sentiment detection: a YouTube use case

In this paper we propose an unsupervised lexicon-based approach to detect the sentiment polarity of user comments in YouTube. Polarity detection in social media content is challenging not only because of the existing limitations in current sentiment dictionaries but also due to the informal linguistic styles used by users. Present dictionaries fail to capture the sentiments of community-created terms. To address the challenge we adopted a data-driven approach and prepared a social media specific list of terms and phrases expressing user sentiments and opinions. Experimental evaluation shows the combinatorial approach has greater potential. Finally, we discuss many research challenges involving social media sentiment analysis.

[1]  Jon M. Kleinberg,et al.  WWW 2009 MADRID! Track: Data Mining / Session: Opinions How Opinions are Received by Online Communities: A Case Study on Amazon.com Helpfulness Votes , 2022 .

[2]  Peter D. Turney Thumbs Up or Thumbs Down? Semantic Orientation Applied to Unsupervised Classification of Reviews , 2002, ACL.

[3]  Christiane Fellbaum,et al.  Book Reviews: WordNet: An Electronic Lexical Database , 1999, CL.

[4]  Khurshid Ahmad,et al.  Sentiment Polarity Identification in Financial News: A Cohesion-based Approach , 2007, ACL.

[5]  Angela Fahrni,et al.  Old Wine or Warm Beer : Target-Specific Sentiment Analysis of Adjectives , .

[6]  François-Régis Chaumartin,et al.  UPAR7: A knowledge-based system for headline sentiment tagging , 2007, Fourth International Workshop on Semantic Evaluations (SemEval-2007).

[7]  Bo Pang,et al.  Thumbs up? Sentiment Classification using Machine Learning Techniques , 2002, EMNLP.

[8]  Christopher D. Manning,et al.  Enriching the Knowledge Sources Used in a Maximum Entropy Part-of-Speech Tagger , 2000, EMNLP.

[9]  Fang Wu,et al.  How Public Opinion Forms , 2008, WINE.

[10]  Kerstin Denecke,et al.  Using SentiWordNet for multilingual sentiment analysis , 2008, 2008 IEEE 24th International Conference on Data Engineering Workshop.

[11]  Jiangchuan Liu,et al.  Understanding the Characteristics of Internet Short Video Sharing: YouTube as a Case Study , 2007, ArXiv.

[12]  John Blitzer,et al.  Biographies, Bollywood, Boom-boxes and Blenders: Domain Adaptation for Sentiment Classification , 2007, ACL.

[13]  Matt Thomas,et al.  Get out the vote: Determining support or opposition from Congressional floor-debate transcripts , 2006, EMNLP.

[14]  Yi Zhang,et al.  UCSC on REC 2006 Blog Opinion Mining , 2006, TREC.

[15]  S. Griffis EDITOR , 1997, Journal of Navigation.

[16]  Alan F. Smeaton,et al.  Combining Social Network Analysis and Sentiment Analysis to Explore the Potential for Online Radicalisation , 2009, 2009 International Conference on Advances in Social Network Analysis and Mining.

[17]  Songbo Tan,et al.  A novel scheme for domain-transfer problem in the context of sentiment analysis , 2007, CIKM '07.

[18]  Wolfgang Nejdl,et al.  How useful are your comments?: analyzing and predicting youtube comments and comment ratings , 2010, WWW '10.

[19]  Andrea Esuli,et al.  Automatic generation of lexical resources for opinion mining: models, algorithms and applications , 2010, SIGF.