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Multi-Scenario Ranking with Adaptive Feature Learning

裕美子 増田, Bofang Li, Si Chen, Xubin Li, Hongbo Deng, Jian Xu, Bo Zheng, Qian Wang, Chenliang Li

202315 citationsDOIOpen Access PDF

Abstract

Recently, Multi-Scenario Learning (MSL) is widely used in recommendation and retrieval systems in the industry because it facilitates transfer learning from different scenarios, mitigating data sparsity and reducing maintenance cost. These efforts produce different MSL paradigms by searching more optimal network structure, such as Auxiliary Network, Expert Network, and Multi-Tower Network. It is intuitive that different scenarios could hold their specific characteristics, activating the user's intents quite differently. In other words, different kinds of auxiliary features would bear varying importance under different scenarios. With more discriminative feature representations refined in a scenario-aware manner, better ranking performance could be easily obtained without expensive search for the optimal network structure. Unfortunately, this simple idea is mainly overlooked but much desired in real-world systems.

Topics & Concepts

Computer scienceRanking (information retrieval)Feature (linguistics)Discriminative modelMachine learningLearning to rankArtificial intelligenceFeature learningTransfer of learningSimple (philosophy)Data miningPhilosophyLinguisticsEpistemologyAdvanced Graph Neural NetworksText and Document Classification Technologies