福利姬自慰researchers developing AI system to tackle harmful social media content
Hate speech and misinformation on social media can have a devastating impact, particularly on marginalized communities. But what if we used artificial intelligence to combat such harmful content?
That鈥檚 the goal of a team of University of Toronto researchers who were awarded a by the (DSI) to develop an AI system to address the marginalization of communities in data-centric systems 鈥 including social media platforms such as Twitter.
The team consists of three faculty members. is an assistant professor in the department of computer science in the Faculty of Arts & Science and a fellow of . is an assistant professor in the department of language studies at 福利姬自慰Scarborough. is an assistant professor cross-appointed between the department of computer science and the Faculty of Information, the director of the and a faculty affiliate of the Schwartz Reisman Institute for Technology and Society.
Their goal is to make content moderation more inclusive by involving the communities affected by harmful or hateful content on social media. The project is a collaboration with two Canadian non-profit organizations: the Chinese Canadian National Council for Social Justice (CCNC-SJ) and the Islam Unravelled Anti-Racism Initiative.
Historically marginalized groups are most affected by content moderation failings as they have lower representation among human moderators and their data is less available for algorithms, Ahmed explains.
鈥淲hile most social media platforms have taken measures to moderate and identify harmful content and limit its spread, human moderators and AI algorithms often fail to identify it correctly and take proper actions," he says.
The team plans to design and evaluate the proposed system to address potential Islamophobic and Sinophobic posts on Twitter. The AI system aims to democratize content moderation by including diverse voices in two primary ways: first, by allowing users to contest a decision, the moderation process becomes more transparent and trustworthy for users who are victims of online harms. Second, by taking user input and retraining machine learning (ML) models, the system ensures that users鈥 contesting positions reflect on the prescreening ML system.
鈥淎nnotating data becomes challenging when the annotators are divided in their opinions. Resolving this issue democratically requires involving different communities, which is currently not common in data science practices," Ahmed notes.
"This project addresses the issue by designing, developing and evaluating a pluralistic framework of justification and contestation in data science while working with two historically marginalized communities in Toronto.鈥
The AI system will integrate the knowledge and experiences of community members into the process of reducing hateful content directed toward their communities. The team is using a participatory data-curation methodology that helps them learn about the characterization of different kinds of harmful content affecting a community and includes members of the corresponding community in the data-labelling process to ensure data quality.
鈥淲e are grateful to DSI for their generous support for this project. The DSI community has also helped us connect with people conducting similar research and learn from them," Ahmed says, adding that his team's research is expected to have far-reaching impacts beyond the two communities it is currently focused on.