NYU & UBC Propose Deviation-Based Learning to Advance Recommender System Training | Synced

A research team from New York University and the University of British Columbia proposes deviation-based learning, a novel approach for training recommender systems that learns user knowledge by ob...

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Source: Synced | AI Technology & Industry Review

A research team from New York University and the University of British Columbia proposes deviation-based learning, a novel approach for training recommender systems that learns user knowledge by observing whether they follow or deviate from recommendations.