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Participatory Approaches to Building Datasets on Abuse #594
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This issue is stale because it has been open for 30 days with no activity. |
Hi! Is this task still considering participants? I am interested in volunteering. I research Online Hate Speech in low-resource settings. I have experience in curating datasets for gender-based stereotypes and I have worked on Multi-Modal Audio Abuse Detection in Low Resource Settings. |
This issue is stale because it has been open for 30 days with no activity. |
This issue was closed because it has been inactive for 14 days since being marked as stale. |
This issue is stale because it has been open for 30 days with no activity. |
Description:
Automated approaches to abuse detection rely on annotated datasets. At least at present, unsupervised machine learning alone cannot detect abuse across languages. To fill the gap of abuse detection datasets in India languages, Tattle started the Uli project to specifically create datasets on gendered abuse in Indian languages.But the focus is also to take a survivor centered perspective on abuse. The datasets was created with people of marginalized genders at the receiving end of abuse. The first dataset on abusive tweets helped us develop a methodology for participatory datasets that we would now like to extend to more languages and modalities.
The Scope of This Task:
This ticket should be treated as a statement of intent for a multi-year project. If you're interested in collaborating on this project, please leave a comment.
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