Qianjia Huang
2018
Cyberbullying Intervention Based on Convolutional Neural Networks
Qianjia Huang
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Diana Inkpen
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Jianhong Zhang
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David Van Bruwaene
Proceedings of the First Workshop on Trolling, Aggression and Cyberbullying (TRAC-2018)
This paper describes the process of building a cyberbullying intervention interface driven by a machine-learning based text-classification service. We make two main contributions. First, we show that cyberbullying can be identified in real-time before it takes place, with available machine learning and natural language processing tools. Second, we present a mechanism that provides individuals with early feedback about how other people would feel about wording choices in their messages before they are sent out. This interface not only gives a chance for the user to revise the text, but also provides a system-level flagging/intervention in a situation related to cyberbullying.
Cyber-aggression Detection using Cross Segment-and-Concatenate Multi-Task Learning from Text
Ahmed Husseini Orabi
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Mahmoud Husseini Orabi
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Qianjia Huang
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Diana Inkpen
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David Van Bruwaene
Proceedings of the First Workshop on Trolling, Aggression and Cyberbullying (TRAC-2018)
In this paper, we propose a novel deep-learning architecture for text classification, named cross segment-and-concatenate multi-task learning (CSC-MTL). We use CSC-MTL to improve the performance of cyber-aggression detection from text. Our approach provides a robust shared feature representation for multi-task learning by detecting contrasts and similarities among polarity and neutral classes. We participated in the cyber-aggression shared task under the team name uOttawa. We report 59.74% F1 performance for the Facebook test set and 56.9% for the Twitter test set, for detecting aggression from text.