Sentiment topic models for social emotion mining

The rapid development of social media services has facilitated the communication of opinions through online news, blogs, microblogs/tweets, instant-messages, and so forth. This article concentrates on the mining of readers' emotions evoked by social media materials. Compared to the classical sentiment analysis from writers' perspective, sentiment analysis of readers is sometimes more meaningful in social media. We propose two sentiment topic models to associate latent topics with evoked emotions of readers. The first model which is an extension of the existing Supervised Topic Model, generates a set of topics from words firstly, followed by sampling emotions from each topic. The second model generates topics from social emotions directly. Both models can be applied to social emotion classification and generate social emotion lexicons. Evaluation on social emotion classification verifies the effectiveness of the proposed models. The generated social emotion lexicon samples further show that our models can discover meaningful latent topics exhibiting emotion focus.

[1]  Zheng Lin,et al.  Towards jointly extracting aspects and aspect-specific sentiment knowledge , 2012, CIKM.

[2]  Gregor Heinrich Parameter estimation for text analysis , 2009 .

[3]  Plaban Kumar Bhowmick Reader Perspective Emotion Analysis in Text through Ensemble based Multi-Label Classification Framework , 2009, Comput. Inf. Sci..

[4]  Claire Cardie,et al.  Annotating Topics of Opinions , 2008, LREC.

[5]  Danushka Bollegala,et al.  Using Multiple Sources to Construct a Sentiment Sensitive Thesaurus for Cross-Domain Sentiment Classification , 2011, ACL.

[6]  Susan T. Dumais,et al.  Characterizing Microblogs with Topic Models , 2010, ICWSM.

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

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

[9]  Hsin-Hsi Chen,et al.  What emotions do news articles trigger in their readers? , 2007, SIGIR.

[10]  Michael I. Jordan,et al.  Latent Dirichlet Allocation , 2001, J. Mach. Learn. Res..

[11]  David M. Blei,et al.  Supervised Topic Models , 2007, NIPS.

[12]  Qiang Yang,et al.  Cross-domain sentiment classification via spectral feature alignment , 2010, WWW '10.

[13]  Ramesh Nallapati,et al.  Labeled LDA: A supervised topic model for credit attribution in multi-labeled corpora , 2009, EMNLP.

[14]  Hsin-Hsi Chen,et al.  Ranking Reader Emotions Using Pairwise Loss Minimization and Emotional Distribution Regression , 2008, EMNLP.

[15]  Changqin Quan,et al.  An Exploration of Features for Recognizing Word Emotion , 2010, COLING.

[16]  Thomas L. Griffiths,et al.  The Author-Topic Model for Authors and Documents , 2004, UAI.

[17]  Rong Yan,et al.  Joint Emotion-Topic Modeling for Social Affective Text Mining , 2009, 2009 Ninth IEEE International Conference on Data Mining.

[18]  Yong Yu,et al.  Tapping on the potential of q&a community by recommending answer providers , 2008, CIKM '08.

[19]  Richard Wicentowski,et al.  SWAT-MP:The SemEval-2007 Systems for Task 5 and Task 14 , 2007, Fourth International Workshop on Semantic Evaluations (SemEval-2007).

[20]  Kyu-Hwan Jung,et al.  Probabilistic generative ranking method based on multi-support vector domain description , 2013, Inf. Sci..

[21]  Harith Alani,et al.  Automatically Extracting Polarity-Bearing Topics for Cross-Domain Sentiment Classification , 2011, ACL.

[22]  Andrew McCallum,et al.  Topics over time: a non-Markov continuous-time model of topical trends , 2006, KDD '06.

[23]  Rui Xia,et al.  Ensemble of feature sets and classification algorithms for sentiment classification , 2011, Inf. Sci..

[24]  Tuomas Eerola,et al.  Semantic Computing of Moods Based on Tags in Social Media of Music , 2013, IEEE Transactions on Knowledge and Data Engineering.

[25]  Wanqing Li,et al.  Ranking social emotions by learning listwise preference , 2011, The First Asian Conference on Pattern Recognition.

[26]  Yulan He,et al.  Joint sentiment/topic model for sentiment analysis , 2009, CIKM.

[27]  Ronen Feldman,et al.  Techniques and applications for sentiment analysis , 2013, CACM.

[28]  Mark Steyvers,et al.  Finding scientific topics , 2004, Proceedings of the National Academy of Sciences of the United States of America.

[29]  Pabitra Mitra,et al.  Multi-label Text Classification Approach for Sentence Level News Emotion Analysis , 2009, PReMI.

[30]  Björn W. Schuller,et al.  New Avenues in Opinion Mining and Sentiment Analysis , 2013, IEEE Intelligent Systems.

[31]  Rong Yan,et al.  Mining Social Emotions from Affective Text , 2012, IEEE Transactions on Knowledge and Data Engineering.

[32]  Min Wu,et al.  Multi-label ensemble based on variable pairwise constraint projection , 2013, Inf. Sci..

[33]  Hsin-Hsi Chen,et al.  Emotion Classification of Online News Articles from the Reader's Perspective , 2008, 2008 IEEE/WIC/ACM International Conference on Web Intelligence and Intelligent Agent Technology.

[34]  Carlo Strapparava,et al.  SemEval-2007 Task 14: Affective Text , 2007, Fourth International Workshop on Semantic Evaluations (SemEval-2007).

[35]  SchullerBjorn,et al.  Knowledge-Based Approaches to Concept-Level Sentiment Analysis , 2013 .