2017
DOI: 10.48550/arxiv.1705.09899
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Understanding Abuse: A Typology of Abusive Language Detection Subtasks

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Cited by 27 publications
(29 citation statements)
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“…NLP-aided approaches to detect abusive behavior online is an active research area (Schmidt and Wiegand, 2017;Mishra et al, 2019;Corazza et al, 2020). Researchers have developed typologies of online abuse (Waseem et al, 2017), constructed datasets annotated with different types of abusive language (Warner and Hirschberg, 2012;Price et al, 2020;Vidgen et al, 2021), and built NLP models to detect them efficiently Mozafari et al, 2019). Researchers have also expanded the focus to more subtle forms of abuse such as condescension and microaggressions (Breitfeller et al, 2019;.…”
Section: Detecting Online Abusementioning
confidence: 99%
“…NLP-aided approaches to detect abusive behavior online is an active research area (Schmidt and Wiegand, 2017;Mishra et al, 2019;Corazza et al, 2020). Researchers have developed typologies of online abuse (Waseem et al, 2017), constructed datasets annotated with different types of abusive language (Warner and Hirschberg, 2012;Price et al, 2020;Vidgen et al, 2021), and built NLP models to detect them efficiently Mozafari et al, 2019). Researchers have also expanded the focus to more subtle forms of abuse such as condescension and microaggressions (Breitfeller et al, 2019;.…”
Section: Detecting Online Abusementioning
confidence: 99%
“…Prior work has also explored sophisticated feature representations including n-grams, linguistic and syntactic features (Nobata et al, 2016), TF-IDF (Salminen et al, 2018), Bag of Words and word embeddings (Djuric et al, 2015), as well as content-specific features such as mentions, proper nouns, named entities, and target group specific vocabularies (Waseem et al, 2017). Topic modeling approaches such as Labeled Latent Dirichlet Allocation have also been proposed (Saleem et al, 2017).…”
Section: Related Workmentioning
confidence: 99%
“…Sexist or racial slur, attacking a minority, seeking to silence a minority, criticizing a minority or defending xenophobia are some of their criterias. In similar work, Waseem et al [14] studied and provided an assessment of influence of annotator knowledge on hate specch on twitter. In other work Wijesiriwardene et al [16] showed that individual tweets are not sufficient to provide evidence for toxic behaviour instead context in interactions can give a better explanation.…”
Section: Related Workmentioning
confidence: 99%