Sentiment Computing for the News Event Based on the Social Media Big Data

The explosive increasing of the social media data on the Web has created and promoted the development of the social media big data mining area welcomed by researchers from both academia and industry. The sentiment computing of news event is a significant component of the social media big data. It ha...

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Published in:IEEE Access
Main Authors: Dandan Jiang, Xiangfeng Luo, Junyu Xuan, Zheng Xu
Format: Article
Language:English
Published: IEEE 2017-01-01
Subjects:
Online Access:https://ieeexplore.ieee.org/document/7568993/
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author Dandan Jiang
Xiangfeng Luo
Junyu Xuan
Zheng Xu
author_facet Dandan Jiang
Xiangfeng Luo
Junyu Xuan
Zheng Xu
author_sort Dandan Jiang
collection DOAJ
container_title IEEE Access
description The explosive increasing of the social media data on the Web has created and promoted the development of the social media big data mining area welcomed by researchers from both academia and industry. The sentiment computing of news event is a significant component of the social media big data. It has also attracted a lot of researches, which could support many real-world applications, such as public opinion monitoring for governments and news recommendation for Websites. However, existing sentiment computing methods are mainly based on the standard emotion thesaurus or supervised methods, which are not scalable to the social media big data. Therefore, we propose an innovative method to do the sentiment computing for news events. More specially, based on the social media data (i.e., words and emoticons) of a news event, a word emotion association network (WEAN) is built to jointly express its semantic and emotion, which lays the foundation for the news event sentiment computation. Based on WEAN, a word emotion computation algorithm is proposed to obtain the initial words emotion, which are further refined through the standard emotion thesaurus. With the words emotion in hand, we can compute every sentence's sentiment. Experimental results on real-world data sets demonstrate the excellent performance of the proposed method on the emotion computing for news events.
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spelling doaj-art-ea71e2f7aaa94b6e9d9efdd3700e9efc2025-08-19T20:55:14ZengIEEEIEEE Access2169-35362017-01-0152373238210.1109/ACCESS.2016.26072187568993Sentiment Computing for the News Event Based on the Social Media Big DataDandan Jiang0Xiangfeng Luo1https://orcid.org/0000-0002-6992-6077Junyu Xuan2Zheng Xu3School of Computer Engineering and Science, Shanghai University, Shanghai, ChinaSchool of Computer Engineering and Science, Shanghai University, Shanghai, ChinaFaculty of Engineering and IT, University of Technology Sydney, Ultimo, NSW, AustraliaThird Research Institute of the Ministry of Public Security, Shanghai, ChinaThe explosive increasing of the social media data on the Web has created and promoted the development of the social media big data mining area welcomed by researchers from both academia and industry. The sentiment computing of news event is a significant component of the social media big data. It has also attracted a lot of researches, which could support many real-world applications, such as public opinion monitoring for governments and news recommendation for Websites. However, existing sentiment computing methods are mainly based on the standard emotion thesaurus or supervised methods, which are not scalable to the social media big data. Therefore, we propose an innovative method to do the sentiment computing for news events. More specially, based on the social media data (i.e., words and emoticons) of a news event, a word emotion association network (WEAN) is built to jointly express its semantic and emotion, which lays the foundation for the news event sentiment computation. Based on WEAN, a word emotion computation algorithm is proposed to obtain the initial words emotion, which are further refined through the standard emotion thesaurus. With the words emotion in hand, we can compute every sentence's sentiment. Experimental results on real-world data sets demonstrate the excellent performance of the proposed method on the emotion computing for news events.https://ieeexplore.ieee.org/document/7568993/Text miningsentiment computingemotion classificationsocial media big data
spellingShingle Dandan Jiang
Xiangfeng Luo
Junyu Xuan
Zheng Xu
Sentiment Computing for the News Event Based on the Social Media Big Data
Text mining
sentiment computing
emotion classification
social media big data
title Sentiment Computing for the News Event Based on the Social Media Big Data
title_full Sentiment Computing for the News Event Based on the Social Media Big Data
title_fullStr Sentiment Computing for the News Event Based on the Social Media Big Data
title_full_unstemmed Sentiment Computing for the News Event Based on the Social Media Big Data
title_short Sentiment Computing for the News Event Based on the Social Media Big Data
title_sort sentiment computing for the news event based on the social media big data
topic Text mining
sentiment computing
emotion classification
social media big data
url https://ieeexplore.ieee.org/document/7568993/
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AT junyuxuan sentimentcomputingforthenewseventbasedonthesocialmediabigdata
AT zhengxu sentimentcomputingforthenewseventbasedonthesocialmediabigdata