Simple approaches of sentiment analysis via ensemble learning

被引:26
作者
Chalothorn, Tawunrat [1 ]
Ellman, Jeremy [1 ]
机构
[1] Department of Computer Science and Digital Technologies, University of Northumbria at Newcastle
来源
Lecture Notes in Electrical Engineering | 2015年 / 339卷
关键词
Analysis; Ensemble learning; Natural language processing; Sentiment; Tweet; Twitter;
D O I
10.1007/978-3-662-46578-3_74
中图分类号
学科分类号
摘要
Twitter has become a popular microblogging tool where users are increasing every minute. It allows its users to post messages of up to 140 characters each time; known as ‘Tweets’. Tweets have become extremely attractive to the marketing sector, since the user can either indicate customer success or presage public relations disasters far more quickly than web pages or traditional media. Moreover, the content of Tweets has become a current active research topic on sentiment polarity as positive or negative. Our experiment of sentiment analysis of contexts of tweets show that the accuracy performance can improve and be better achieved using ensemble learning, which is formed by the majority voting of the Support Vector Machine, Naive Bayes, SentiStrength and Stacking. © Springer-Verlag Berlin Heidelberg 2015.
引用
收藏
页码:631 / 639
页数:8
相关论文
共 24 条
[1]  
Shaikh M.A., Prendinger H., Mitsuru I., Assessing Sentiment of Text by Semantic Dependency and Contextual Valence Analysis, Paper Presented at the Proceedings of the 2Nd International Conference on Affective Computing and Intelligent Interaction, (2007)
[2]  
Pang B., Lee L., Opinion Mining and Sentiment Analysis, Foundations and Trends in Information Retrieval, 2, 1-2, pp. 1-135, (2008)
[3]  
Go A., Bhayani R., Huang L., Twitter sentiment classification using distant supervision, CS224N Natural Language Processing, Project Report, Stanford, pp. 1-12, (2009)
[4]  
Gryc W., Moilanen K., Leveraging Textual Sentiment Analysis with Social Network Modelling, From Text to Political Positions: Text Analysis across Disciplines, 55, (2014)
[5]  
Tan S., Cheng X., Wang Y., Xu H., Adapting Naive Bayes to Domain Adaptation for Sentiment Analysis, pp. 337-349, (2009)
[6]  
Elangovan M., Ramachandran K.I., Sugumaran V., Studies on Bayes classifier for condition monitoring of single point carbide tipped tool based on statistical and histogram features, Expert Systems with Applications, 37, 3, pp. 2059-2065, (2010)
[7]  
Cufoglu A., Lohi M., Madani K., Classification accuracy performance of Naive Bayesian (NB), Bayesian Networks (BN), Lazy Learning of Bayesian Rules (LBR) and Instance-Based Learner (IB1) - comparative study, Paper Presented at the International Conference on Computer Engineering &Amp
[8]  
Systems (ICCES), (2008)
[9]  
Liu B., Web Data Mining: Exploring Hyperlinks, Contents, and Usage Data, (2007)
[10]  
Liu B., Sentiment Analysis and Opinion Mining, (2012)