Cyberbully Detection Using Information of Social Media

碩士 === 國立中正大學 === 資訊管理系研究所 === 106 === Social network such as Facebook and Twitter have promoted communication between people , but some unusual social user overuse the social media like cyberbullying. Cyberbullying in social network will cause more negative effect than traditional bullying. For exa...

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Bibliographic Details
Main Author: 鄭廉恩
Other Authors: Pei-Ju Lee
Format: Others
Language:zh-TW
Published: 2018
Online Access:http://ndltd.ncl.edu.tw/handle/hpnbv2
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spelling ndltd-TW-106CCU003960302019-05-30T03:50:41Z http://ndltd.ncl.edu.tw/handle/hpnbv2 Cyberbully Detection Using Information of Social Media 運用社群資料進行網路霸凌之研究 鄭廉恩 碩士 國立中正大學 資訊管理系研究所 106 Social network such as Facebook and Twitter have promoted communication between people , but some unusual social user overuse the social media like cyberbullying. Cyberbullying in social network will cause more negative effect than traditional bullying. For example, many tweets on Twitter can be read publicly by registered users around the world , so that cyberbullying messages can spread quickly. When a cyber criminal sends a text message to attack other social users, such behavior may involve cyberaggression and cyberbullying. In the past, the cyberbullying literature focused on a single text message to make the expert distinguish whether the cyber bullying or not. This situation is more like the criteria of cyber aggression. The criteria of the cyberbullying must include the imbalance of power and repetition, in order to consider the power of imbalance and repetition, the expert should not only use text message to identify cyberbullying, they must understand the whole information on the social network such as likes or replies in a tweet and the tweet that social user received recently. This study collects tweets and user information on the Twitter, and create three different feature group (text, user, social). Using Random Forest, Logistic Regression, and Support Vectors three classifiers to build cyberbullying model. With the comparison of models established by three different classifiers, the best predict model is selected as the research discussed. Pei-Ju Lee 李珮如 2018 學位論文 ; thesis 49 zh-TW
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description 碩士 === 國立中正大學 === 資訊管理系研究所 === 106 === Social network such as Facebook and Twitter have promoted communication between people , but some unusual social user overuse the social media like cyberbullying. Cyberbullying in social network will cause more negative effect than traditional bullying. For example, many tweets on Twitter can be read publicly by registered users around the world , so that cyberbullying messages can spread quickly. When a cyber criminal sends a text message to attack other social users, such behavior may involve cyberaggression and cyberbullying. In the past, the cyberbullying literature focused on a single text message to make the expert distinguish whether the cyber bullying or not. This situation is more like the criteria of cyber aggression. The criteria of the cyberbullying must include the imbalance of power and repetition, in order to consider the power of imbalance and repetition, the expert should not only use text message to identify cyberbullying, they must understand the whole information on the social network such as likes or replies in a tweet and the tweet that social user received recently. This study collects tweets and user information on the Twitter, and create three different feature group (text, user, social). Using Random Forest, Logistic Regression, and Support Vectors three classifiers to build cyberbullying model. With the comparison of models established by three different classifiers, the best predict model is selected as the research discussed.
author2 Pei-Ju Lee
author_facet Pei-Ju Lee
鄭廉恩
author 鄭廉恩
spellingShingle 鄭廉恩
Cyberbully Detection Using Information of Social Media
author_sort 鄭廉恩
title Cyberbully Detection Using Information of Social Media
title_short Cyberbully Detection Using Information of Social Media
title_full Cyberbully Detection Using Information of Social Media
title_fullStr Cyberbully Detection Using Information of Social Media
title_full_unstemmed Cyberbully Detection Using Information of Social Media
title_sort cyberbully detection using information of social media
publishDate 2018
url http://ndltd.ncl.edu.tw/handle/hpnbv2
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