2021
DOI: 10.1609/aaai.v35i17.17785
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Enhancing E-commerce Recommender System Adaptability with Online Deep Controllable Learning-To-Rank

Abstract: In the past decade, recommender systems for e-commerce have witnessed significant advancement. Recommendation scenarios can be divided into different type (e.g., pre-, during-, post-purchase, campaign, promotion, bundle) for different user groups or different businesses. For different scenarios, the goals of recommendation are different. This is reflected by the different performance metrics employed. In addition, online promotional campaigns, which attract high traffic volumes, are also a critical factor affe… Show more

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