DocumentCode
267160
Title
Anomaly Detection through Enhanced Sentiment Analysis on Social Media Data
Author
Zhaoxia Wang ; Joo, Victor ; Chuan Tong ; Xin Xin ; Hoong Chor Chin
Author_Institution
Social & Cognitive Comput. Dept., Agency for Sci., Technol. & Res., Singapore, Singapore
fYear
2014
fDate
15-18 Dec. 2014
Firstpage
917
Lastpage
922
Abstract
Anomaly detection in sentiment analysis refers to detecting abnormal opinions, sentiment patterns or special temporal aspects of such patterns in a collection of data. The anomalies detected may be due to sudden sentiment changes hidden in large amounts of text. If these anomalies are undetected or poorly managed, the consequences may be severe, e.g. A business whose customers reveal negative sentiments and will no longer support the establishment. Social media platforms, such as Twitter, provide a vast source of information, which includes user feedback, opinion and information on most issues. Many organizations also leverage social media platforms to publish information about events, products, services, policies and other topics frequently. Thus, analyzing social media data to identify abnormal events in a timely manner is a beneficial topic. It will enable the businesses and government organizations to intervene early or adopt proper strategies if needed. However, it is also a challenge due to the diversity and size of social media data. In this study, we survey existing anomaly analysis as well as sentiment analysis methods and analyze their limitations and challenges. To tackle the challenges, an enhanced sentiment classification method is proposed and discussed. We study the possibility of employing the proposed method to perform anomaly detection through sentiment analysis on social media data. We tested the applicability and robustness of the method through sentiment analysis on tweet data. The results demonstrate the capabilities of the proposed method and provide meaningful insights into this research area.
Keywords
organisational aspects; pattern classification; social networking (online); text analysis; Twitter; abnormal events; abnormal opinions; anomaly detection; businesses organizations; enhanced sentiment analysis; government organizations; negative sentiments; sentiment classification method; sentiment patterns; social media data; temporal aspects; user feedback; Companies; Data mining; Media; Sentiment analysis; Training data; Anomaly detection; Twitter; enhanced sentiment analysis; machine-learning; pattern classification; sentiment classification; social media;
fLanguage
English
Publisher
ieee
Conference_Titel
Cloud Computing Technology and Science (CloudCom), 2014 IEEE 6th International Conference on
Conference_Location
Singapore
Type
conf
DOI
10.1109/CloudCom.2014.69
Filename
7037784
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