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Abuse Detection

Abuse detection is the task of identifying abusive behaviors, such as hate speech, offensive language, sexism and racism, in utterances from social media platforms (Source: https://arxiv.org/abs/1802.00385).

Papers

Showing 5173 of 73 papers

TitleStatusHype
Multi-label Hate Speech and Abusive Language Detection in Indonesian TwitterCode0
Pay ``Attention'' to your Context when Classifying Abusive LanguageCode0
Online abuse detection: the value of preprocessing and neural attention modelsCode0
Racial Bias in Hate Speech and Abusive Language Detection DatasetsCode0
Abusive Language Detection in Online Conversations by Combining Content-and Graph-based FeaturesCode0
UM-IU@LING at SemEval-2019 Task 6: Identifying Offensive Tweets Using BERT and SVMsCode0
Abusive Language Detection with Graph Convolutional Networks0
Offensive Language Analysis using Deep Learning ArchitectureCode0
Conversational Networks for Automatic Online Moderation0
Determining Code Words in Euphemistic Hate Speech Using Word Embedding Networks0
Did you offend me? Classification of Offensive Tweets in Hinglish LanguageCode0
Aggressive language in an online hacking forum0
Context-Aware Attention for Understanding Twitter Abuse0
Mind Your Language: Abuse and Offense Detection for Code-Switched Languages0
Neural Character-based Composition Models for Abuse Detection0
Author Profiling for Abuse DetectionCode0
Language Identification and Named Entity Recognition in Hinglish Code Mixed Tweets0
A Unified Deep Learning Architecture for Abuse Detection0
Detecting Offensive Language in Tweets Using Deep LearningCode0
Graph-based Features for Automatic Online Abuse Detection0
Understanding Abuse: A Typology of Abusive Language Detection SubtasksCode0
Impact Of Content Features For Automatic Online Abuse Detection0
Throttling Poisson Processes0
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