Issues of Social Data Analytics with a New Method for Sentiment Analysis of Social Media Data

Social media data consists of feedback, critiques and other comments that are posted online by internet users. Collectively, these comments may reflect sentiments that are sometimes not captured in traditional data collection methods such as administering a survey questionnaire. Thus, social media data offers a rich source of information, which can be adequately analyzed and understood. In this paper, we survey the extant research literature on sentiment analysis and discuss various limitations of the existing analytical methods. A major limitation in the large majority of existing research is the exclusive focus on social media data in the English language. There is a need to plug this research gap by developing effective analytic methods and approaches for sentiment analysis of data in non-English languages. These analyses of non-English language data should be integrated with the analysis of data in English language to better understand sentiments and address people-centric issues, particularly in multilingual societies. In addition, developing a high accuracy method, in which the customization of training datasets is not required, is also a challenge in current sentiment analysis. To address these various limitations and issues in current research, we propose a method that employs a new sentiment analysis scheme. The new scheme enables us to derive dominant valence as well as prominent positive and negative emotions by using an adaptive fuzzy inference method (FIM) with linguistics processors to minimize semantic ambiguity as well as multi-source lexicon integration and development. Our proposed method overcomes the limitations of the existing methods by not only improving the accuracy of the algorithm but also having the capability to perform analysis on non-English languages. Several case studies are included in this paper to illustrate the application and utility of our proposed method.

[1]  Hua Xu,et al.  Weakness Finder: Find product weakness from Chinese reviews by using aspects based sentiment analysis , 2012, Expert Syst. Appl..

[2]  Mor Naaman,et al.  Social multimedia: highlighting opportunities for search and mining of multimedia data in social media applications , 2010, Multimedia Tools and Applications.

[3]  Alexandra Balahur,et al.  Comparative experiments using supervised learning and machine translation for multilingual sentiment analysis , 2014, Comput. Speech Lang..

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

[5]  Fabrício Benevenuto,et al.  Comparing and combining sentiment analysis methods , 2013, COSN '13.

[6]  Barrie Gunter,et al.  Sentiment Analysis: A Market-Relevant and Reliable Measure of Public Feeling? , 2014 .

[7]  Fan Yang,et al.  Hierarchical Fuzzy Logic System for Implementing Maintenance Schedules of Offshore Power Systems , 2012, IEEE Transactions on Smart Grid.

[8]  Zhaoxia Wang,et al.  Enhancing Machine-Learning Methods for Sentiment Classification of Web Data , 2014, AIRS.

[9]  Vishal Gupta,et al.  A Survey on Sentiment Analysis and Opinion Mining Techniques , 2013 .

[10]  Hua Xu,et al.  Implicit feature identification via hybrid association rule mining , 2013, Expert Syst. Appl..

[11]  Wei Shi,et al.  Sentiment analysis of Chinese microblogging based on sentiment ontology: a case study of ‘7.23 Wenzhou Train Collision’ , 2013, Connect. Sci..

[12]  Jerry M. Mendel,et al.  Challenges for Perceptual Computer Applications and How They Were Overcome , 2012, IEEE Computational Intelligence Magazine.

[13]  Marián Šimko,et al.  Sentiment analysis on microblog utilizing appraisal theory , 2013, World Wide Web.

[14]  Rudy Prabowo,et al.  Sentiment analysis: A combined approach , 2009, J. Informetrics.

[15]  Francesc Alías,et al.  Sentence-Based Sentiment Analysis for Expressive Text-to-Speech , 2013, IEEE Transactions on Audio, Speech, and Language Processing.

[16]  Andrew B. Whinston,et al.  Designing a social-broadcasting-based business intelligence system , 2011, TMIS.

[17]  Gang Zhou,et al.  Dynamic evolution of collective emotions in social networks: a case study of Sina weibo , 2013, Science China Information Sciences.

[18]  Hsinchun Chen,et al.  AI and Opinion Mining , 2010, IEEE Intelligent Systems.

[19]  Springer-Verlag London Limited,et al.  Predicting consumer sentiments using online sequential extreme learning machine and intuitionistic fuzzy sets , 2012 .

[20]  Vincenzo Loia,et al.  A fuzzy-oriented sentic analysis to capture the human emotion in Web-based content , 2014, Knowl. Based Syst..

[21]  Rada Mihalcea,et al.  Computational approaches to subjectivity and sentiment analysis: Present and envisaged methods and applications , 2014, Comput. Speech Lang..

[22]  Ronald R. Yager,et al.  WebPET: An Online Tool for Lexicographic Decision Making , 2010, IEEE Intelligent Systems.

[23]  Marcel Salathé,et al.  Assessing Vaccination Sentiments with Online Social Media: Implications for Infectious Disease Dynamics and Control , 2011, PLoS Comput. Biol..

[24]  Bing Liu Sentiment Analysis , 2020 .

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

[26]  W. Chou,et al.  Social Media Use in the United States: Implications for Health Communication , 2009, Journal of medical Internet research.

[27]  Yang Yu,et al.  The impact of social and conventional media on firm equity value: A sentiment analysis approach , 2013, Decis. Support Syst..

[28]  J. Pennebaker,et al.  The Psychological Meaning of Words: LIWC and Computerized Text Analysis Methods , 2010 .

[29]  Bokyoung Kang,et al.  Fast outlier detection for very large log data , 2011, Expert Syst. Appl..

[30]  Rosa M. Carro,et al.  Sentiment analysis in Facebook and its application to e-learning , 2014, Comput. Hum. Behav..

[31]  Bo Yuan,et al.  Sentiment Classification in Chinese Microblogs: Lexicon-based and Learning-based Approaches , 2013 .

[32]  Mingliang Chen,et al.  Building emotional dictionary for sentiment analysis of online news , 2014, World Wide Web.

[33]  Marie-Francine Moens,et al.  A machine learning approach to sentiment analysis in multilingual Web texts , 2009, Information Retrieval.

[34]  Janyce Wiebe,et al.  Articles: Recognizing Contextual Polarity: An Exploration of Features for Phrase-Level Sentiment Analysis , 2009, CL.

[35]  Jonathan Sullivan,et al.  China’s Weibo: Is faster different? , 2014, New Media Soc..

[36]  Hongchul Lee,et al.  Sentiment analysis of twitter audiences: Measuring the positive or negative influence of popular twitterers , 2012, J. Assoc. Inf. Sci. Technol..