Probabilistic Rank and Reward: A Scalable Model for Slate Recommendation

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Authors Imad Aouali, Achraf Ait Sidi Hammou, Otmane Sakhi, David Rohde, Flavian Vasile arXiv ID 2208.06263 Category cs.IR: Information Retrieval Cross-listed cs.LG, stat.ML Citations 9 Last Checked 4 months ago
Abstract
We introduce Probabilistic Rank and Reward (PRR), a scalable probabilistic model for personalized slate recommendation. Our approach allows off-policy estimation of the reward in the scenario where the user interacts with at most one item from a slate of K items. We show that the probability of a slate being successful can be learned efficiently by combining the reward, whether the user successfully interacted with the slate, and the rank, the item that was selected within the slate. PRR outperforms existing off-policy reward optimizing methods and is far more scalable to large action spaces. Moreover, PRR allows fast delivery of recommendations powered by maximum inner product search (MIPS), making it suitable in low latency domains such as computational advertising.
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