Co-Authoring the Self: A Human-AI Interface for Interest Reflection in Recommenders
By: Ruixuan Sun , Junyuan Wang , Sanjali Roy and more
Potential Business Impact:
Lets you fix movie suggestions from AI.
Natural language-based user profiles in recommender systems have been explored for their interpretability and potential to help users scrutinize and refine their interests, thereby improving recommendation quality. Building on this foundation, we introduce a human-AI collaborative profile for a movie recommender system that presents editable personalized interest summaries of a user's movie history. Unlike static profiles, this design invites users to directly inspect, modify, and reflect on the system's inferences. In an eight-week online field deployment with 1775 active movie recommender users, we find persistent gaps between user-perceived and system-inferred interests, show how the profile encourages engagement and reflection, and identify design directions for leveraging imperfect AI-powered user profiles to stimulate more user intervention and build more transparent and trustworthy recommender experiences.
Similar Papers
"Pragmatic Tools or Empowering Friends?" Discovering and Co-Designing Personality-Aligned AI Writing Companions
Human-Computer Interaction
Makes AI writing tools fit your personality.
Knowing Ourselves Through Others: Reflecting with AI in Digital Human Debates
Human-Computer Interaction
Helps kids understand themselves by talking to AI.
Rethinking User Empowerment in AI Recommender Systems: Designing through Transparency and Control
Human-Computer Interaction
Lets you control what online stuff you see.