RESUS: Warm-up Cold Users via Meta-learning Residual User Preferences in CTR Prediction

Author:

Shen Yanyan1ORCID,Zhao Lifan1ORCID,Cheng Weiyu1ORCID,Zhang Zibin2ORCID,Zhou Wenwen2ORCID,Kangyi Lin2ORCID

Affiliation:

1. Department of Computer Science and Engineering, Shanghai Jiao Tong University, Shanghai, China

2. WeChat, Tencent, China

Abstract

Click-through Rate (CTR) prediction on cold users is a challenging task in recommender systems. Recent researches have resorted to meta-learning to tackle the cold-user challenge, which either perform few-shot user representation learning or adopt optimization-based meta-learning. However, existing methods suffer from information loss or inefficient optimization process, and they fail to explicitly model global user preference knowledge, which is crucial to complement the sparse and insufficient preference information of cold users. In this article, we propose a novel and efficient approach named RESUS, which decouples the learning of global preference knowledge contributed by collective users from the learning of residual preferences for individual users. Specifically, we employ a shared predictor to infer basis user preferences, which acquires global preference knowledge from the interactions of different users. Meanwhile, we develop two efficient algorithms based on the nearest neighbor and ridge regression predictors, which infer residual user preferences via learning quickly from a few user-specific interactions. Extensive experiments on three public datasets demonstrate that our RESUS approach is efficient and effective in improving CTR prediction accuracy on cold users, compared with various state-of-the-art methods.

Funder

National Key Research and Development Program of China

Shanghai Municipal Science and Technology Major Project

Tencent Wechat Rhino-Bird Focused Research Program, and SJTU Global Strategic Partnership

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Science Applications,General Business, Management and Accounting,Information Systems

Reference53 articles.

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3. Karan Aggarwal, Pranjul Yadav, and S. Sathiya Keerthi. 2019. Domain adaptation in display advertising: An application for partner cold-start. In Proceedings of the RecSys. 178–186.

4. Linas Baltrunas Karen Church Alexandros Karatzoglou and Nuria Oliver. 2015. Frappe: Understanding the usage and perception of mobile app recommendations in-the-wild. Retrieved from https://arXiv:1505.03014.

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