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Intersectional Bias in Hate Speech and Abusive Language Datasets

Kim, Jae Yeon / Ortiz, Carlos / Nam, Sarah / Santiago, Sarah / Datta, Vivek

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Abstract

Algorithms are widely applied to detect hate speech and abusive language in social media. We investigated whether the human-annotated data used to train these algorithms are biased. We utilized a publicly available annotated Twitter dataset (Founta et al. 2018) and classified the racial, gender, and party identification dimensions of 99,996 tweets. The results showed that African American tweets were up to 3.7 times more likely to be labeled as abusive, and African American male tweets were up to 77% more likely to be labeled as hateful compared to the others. These patterns were statistically significant and robust even when party identification was added as a control variable. This study provides the first systematic evidence on intersectional bias in datasets of hate speech and abusive language.

Issue Date
2020-06-08
Publisher
AAAI Organization
URI
https://archives.kdischool.ac.kr/handle/11125/42835
URL
https://sites.google.com/view/icwsm2020datachallenge
Conf. Name
Proceedings of the Fourteenth International Conference on Web and Social Media (ICWSM), Data Challenge Workshop
Place
US
Atlanta, Georgia, USA
Conference Date
2020-06-08
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