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MetaSelector: Meta-Learning for Recommendation with User-Level Adaptive Model Selection

Authors :
Luo, Mi
Chen, Fei
Cheng, Pengxiang
Dong, Zhenhua
He, Xiuqiang
Feng, Jiashi
Li, Zhenguo
Publication Year :
2020

Abstract

Recommender systems often face heterogeneous datasets containing highly personalized historical data of users, where no single model could give the best recommendation for every user. We observe this ubiquitous phenomenon on both public and private datasets and address the model selection problem in pursuit of optimizing the quality of recommendation for each user. We propose a meta-learning framework to facilitate user-level adaptive model selection in recommender systems. In this framework, a collection of recommenders is trained with data from all users, on top of which a model selector is trained via meta-learning to select the best single model for each user with the user-specific historical data. We conduct extensive experiments on two public datasets and a real-world production dataset, demonstrating that our proposed framework achieves improvements over single model baselines and sample-level model selector in terms of AUC and LogLoss. In particular, the improvements may lead to huge profit gain when deployed in online recommender systems.<br />Comment: Accepted by WWW 2020

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2001.10378
Document Type :
Working Paper