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Tenrec: A Large-scale Multipurpose Benchmark Dataset for Recommender Systems

Authors :
Yuan, Guanghu
Yuan, Fajie
Li, Yudong
Kong, Beibei
Li, Shujie
Chen, Lei
Yang, Min
Yu, Chenyun
Hu, Bo
Li, Zang
Xu, Yu
Qie, Xiaohu
Publication Year :
2022

Abstract

Existing benchmark datasets for recommender systems (RS) either are created at a small scale or involve very limited forms of user feedback. RS models evaluated on such datasets often lack practical values for large-scale real-world applications. In this paper, we describe Tenrec, a novel and publicly available data collection for RS that records various user feedback from four different recommendation scenarios. To be specific, Tenrec has the following five characteristics: (1) it is large-scale, containing around 5 million users and 140 million interactions; (2) it has not only positive user feedback, but also true negative feedback (vs. one-class recommendation); (3) it contains overlapped users and items across four different scenarios; (4) it contains various types of user positive feedback, in forms of clicks, likes, shares, and follows, etc; (5) it contains additional features beyond the user IDs and item IDs. We verify Tenrec on ten diverse recommendation tasks by running several classical baseline models per task. Tenrec has the potential to become a useful benchmark dataset for a majority of popular recommendation tasks.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2210.10629
Document Type :
Working Paper