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    3. Reinforcement Routing on Proximity Graph for Efficient Recommendation

    Reinforcement Routing on Proximity Graph for Efficient Recommendation

    TOIS 2023 paper proposing reinforcement learning-based routing on proximity graphs for efficient recommendation, applying graph traversal optimization to recommendation systems using vector-based item representations.

    Overview

    Applies reinforcement learning to optimize routing decisions on proximity graphs for recommendation tasks.

    Key Contributions

    • Reinforcement learning for graph-based search routing
    • Optimizes traversal strategy for recommendation scenarios
    • Data-driven edge selection during search
    • Published in TOIS 2023

    Publication

    • Venue: TOIS 2023
    • Authors: Feng et al.
    Surveys

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    Information

    Websitedl.acm.org
    PublishedApr 4, 2026

    Categories

    1 Item
    Research Papers & Surveys

    Tags

    3 Items
    #graph-index#reinforcement-learning#recommendation

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