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Leveraging Bias in Pre-Trained Word Embeddings for Unsupervised Microaggression Detection

Authors :
Ògúnremí, Tolúlope'
Sabri, Nazanin
Basile, Valerio
Caselli, Tommaso
Fersini, Elisabetta
Passarotti, Marco
Patti, Viviana
Computational Linguistics (CL)
Source :
Proceedings of the Eighth Italian Conference on Computational Linguistics
Publication Year :
2021
Publisher :
CEUR Workshop Proceedings (CEUR-WS.org), 2021.

Abstract

Microaggressions are subtle manifestations of bias (Breitfeller et al., 2019). These demonstrations of bias can often be classified as a subset of abusive language. However, not as much focus has been placed on the recognition of these instances. As a result, limited data is available on the topic, and only in English. Being able to detect microaggressions without the need for labeled data would be advantageous since it would allow content moderation also for languages lacking annotated data. In this study, we introduce an unsupervised method to detect microaggressions in natural language expressions. The algorithm relies on pre-trained word-embeddings, leveraging the bias encoded in the model in order to detect microaggressions in unseen textual instances. We test the method on a dataset of racial and gender-based microaggressions, reporting promising results. We further run the algorithm on out-of-domain unseen data with the purpose of bootstrapping corpora of microaggressions “in the wild”, and discuss the benefits and drawbacks of our proposed method.

Subjects

Subjects :
hate speech
NLP
micro-aggression

Details

Language :
English
Database :
OpenAIRE
Journal :
Proceedings of the Eighth Italian Conference on Computational Linguistics
Accession number :
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