A Product Feature Inference Model for Mining Implicit Customer Preferences Within Large Scale Social Media Networks
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[1] Conrad S. Tucker. Fad or Here to Stay: Predicting Product Market Adoption and Longevity Using Large Scale, Social Media Data DETC2013-12661 , 2013 .
[2] Mark Dredze,et al. You Are What You Tweet: Analyzing Twitter for Public Health , 2011, ICWSM.
[3] Ari Rappoport,et al. ICWSM - A Great Catchy Name: Semi-Supervised Recognition of Sarcastic Sentences in Online Product Reviews , 2010, ICWSM.
[4] Christophe G. Giraud-Carrier,et al. Identifying Health-Related Topics on Twitter - An Exploration of Tobacco-Related Tweets as a Test Topic , 2011, SBP.
[5] William R. Hersh,et al. Mapping Vocabularies Using Latent Semantics , 1998 .
[6] Mike Thelwall,et al. Sentiment in Twitter events , 2011, J. Assoc. Inf. Sci. Technol..
[7] Yue Wang,et al. An Exploration of Tie-Breaking for Microblog Retrieval , 2014, ECIR.
[8] Michael I. Jordan,et al. Latent Dirichlet Allocation , 2001, J. Mach. Learn. Res..
[9] Diana Maynard,et al. Who cares about Sarcastic Tweets? Investigating the Impact of Sarcasm on Sentiment Analysis. , 2014, LREC.
[10] D. Muecke. Irony and the Ironic , 1970 .
[11] Herbert L. Colston,et al. Irony in Language and Thought : A Cognitive Science Reader , 2007 .
[12] Johan Bollen,et al. Twitter mood predicts the stock market , 2010, J. Comput. Sci..
[13] Harry Shum,et al. Twitter Topic Summarization by Ranking Tweets using Social Influence and Content Quality , 2012, COLING.
[14] Haluk Bingol,et al. CO-OCCURRENCE NETWORK OF REUTERS NEWS , 2007 .
[15] Jun Liu,et al. An Improved Information Filtering Technology , 2012 .
[16] Ari Rappoport,et al. Semi-Supervised Recognition of Sarcasm in Twitter and Amazon , 2010, CoNLL.
[17] C. Lee Giles,et al. A generalized topic modeling approach for automatic document annotation , 2015, International Journal on Digital Libraries.
[18] C. Lee Giles,et al. Improving algorithm search using the algorithm co-citation network , 2012, JCDL '12.
[19] Hongfei Yan,et al. Comparing Twitter and Traditional Media Using Topic Models , 2011, ECIR.
[20] Susan T. Dumais,et al. Characterizing Microblogs with Topic Models , 2010, ICWSM.
[21] Nina Wacholder,et al. Identifying Sarcasm in Twitter: A Closer Look , 2011, ACL.
[22] C. Lee Giles,et al. Automatic tag recommendation for metadata annotation using probabilistic topic modeling , 2013, JCDL '13.
[23] Penelope Sibun,et al. A Practical Part-of-Speech Tagger , 1992, ANLP.
[24] Conrad S. Tucker,et al. Discovering Next Generation Product Innovations by Identifying Lead User Preferences Expressed Through Large Scale Social Media Data , 2014 .
[25] Heng Ji,et al. Linking Tweets to News: A Framework to Enrich Short Text Data in Social Media , 2013, ACL.
[26] E. Fox. Emotion Science: Cognitive and Neuroscientific Approaches to Understanding Human Emotions , 2008 .
[27] Yutaka Matsuo,et al. Earthquake shakes Twitter users: real-time event detection by social sensors , 2010, WWW '10.
[28] Bernardo A. Huberman,et al. Predicting the Future with Social Media , 2010, 2010 IEEE/WIC/ACM International Conference on Web Intelligence and Intelligent Agent Technology.
[29] Sechan Oh,et al. Automatic Discovery of Service Name Replacements Using Ledger Data , 2015, 2015 IEEE International Conference on Services Computing.
[30] Paolo Rosso,et al. A multidimensional approach for detecting irony in Twitter , 2013, Lang. Resour. Evaluation.
[31] Berkant Barla Cambazoglu,et al. A large-scale sentiment analysis for Yahoo! answers , 2012, WSDM '12.
[32] Asta Bäck,et al. Social Media Roadmaps: Exploring the futures triggered by social media , 2008 .
[33] John Yen,et al. Classifying text messages for the haiti earthquake , 2011, ISCRAM.
[34] Srividya Ramaswamy,et al. Comparing the Efficiency of Two Clustering Techniques , 2010 .
[35] Marcel Salathé,et al. An ensemble heterogeneous classification methodology for discovering health-related knowledge in social media messages , 2014, J. Biomed. Informatics.
[36] Seung-Kyum Choi,et al. Visualization Tool for Interpreting User Needs From User-Generated Content via Text Mining and Classification , 2014, DAC 2014.
[37] Conrad S. Tucker,et al. Quantifying Product Favorability and Extracting Notable Product Features Using Large Scale Social Media Data , 2015, J. Comput. Inf. Sci. Eng..
[38] P. Gloor,et al. Predicting Asset Value through Twitter Buzz , 2012 .
[39] Arvid Kappas,et al. Sentiment in short strength detection informal text , 2010, J. Assoc. Inf. Sci. Technol..
[40] Qiang Yang,et al. Transferring topical knowledge from auxiliary long texts for short text clustering , 2011, CIKM '11.
[41] Conrad S. Tucker,et al. Automated Discovery of Lead Users and Latent Product Features by Mining Large Scale Social Media Networks , 2015 .
[42] C. Lee Giles,et al. Automatic Detection of Pseudocodes in Scholarly Documents Using Machine Learning , 2013, 2013 12th International Conference on Document Analysis and Recognition.
[43] Aristides Gionis,et al. Answers, not links: extracting tips from yahoo! answers to address how-to web queries , 2012, WSDM '12.
[44] Marcel Salathé,et al. Discovering health-related knowledge in social media using ensembles of heterogeneous features , 2013, CIKM.