引言 Introduction
Recommender system basics
Introduction to multi-stage recommender systems
Neural re-ranking fundamentals: challenges, objectives, network structures, and evaluations
单目标 Single objective: Accuracy-oriented re-ranking
Learning by observed signals
Learning by counterfactual signals
Qualitative model comparison: network structure, optimization, personalization, and complexity
Quantitative comparison: LibRerank re-ranking library
多目标再排序 Multi-objective re-ranking
Diversity-aware re-ranking
Fairness-aware re-ranking
出现应用 Emerging applications
Summary and future prospects
专知便捷查看
便捷下载,请关注专知公众号(点击上方蓝色专知关注)
后台回复“N90” 就可以获取《【RecSys22教程】多阶段推荐系统的神经重排序,90页ppt》专知下载链接