作者
Zhaoxia Wang, Chee Seng Chong, Landy Lan, Yinping Yang, Seng Beng Ho, Joo Chuan Tong
发表日期
2016/12/6
研讨会论文
2016 Future technologies conference (FTC)
页码范围
1361-1364
出版商
IEEE
简介
Social media is arguably the richest source of human generated text input. Opinions, feedbacks and critiques provided by internet users reflect attitudes and sentiments towards certain topics, products, or services. The sheer volume of such information makes it effectively impossible for any group of persons to read through. Thus, social media sentiment analysis has become an important area of work to make sense of the social media talk. However, most existing sentiment analysis techniques focus only on the aggregate level, classifying sentiments broadly into positive, neutral or negative, and lack the capabilities to perform fine-grained sentiment analysis. This paper describes a social media analytics engine that employs a social adaptive fuzzy similarity-based classification method to automatically classify text messages into sentiment categories (positive, negative, neutral and mixed), with the ability to identify …
引用总数
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学术搜索中的文章
Z Wang, CS Chong, L Lan, Y Yang, SB Ho, JC Tong - 2016 Future technologies conference (FTC), 2016