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Privileged Features Distillation at Taobao Recommendations

Xu Chen, Quan Li, Junfeng Ge, Jinyang Gao, Xiaoyong Yang, Changhua Pei, Fei Sun, Jian Wu, Hanxiao Sun, Wenwu Ou

202058 citationsDOI

Abstract

Features play an important role in the prediction tasks of e-commerce recommendations. To guarantee the consistency of off-line training and on-line serving, we usually utilize the same features that are both available. However, the consistency in turn neglects some discriminative features. For example, when estimating the conversion rate (CVR), i.e., the probability that a user would purchase the item if she clicked it, features like dwell time on the item detailed page are informative. However, CVR prediction should be conducted for on-line ranking before the click happens. Thus we cannot get such post-event features during serving.

Topics & Concepts

Discriminative modelConsistency (knowledge bases)Computer scienceRanking (information retrieval)Dwell timeLine (geometry)Artificial intelligenceMachine learningInformation retrievalMathematicsPsychologyClinical psychologyGeometryRecommender Systems and TechniquesWeb Data Mining and AnalysisSentiment Analysis and Opinion Mining
Privileged Features Distillation at Taobao Recommendations | Litcius