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A Critical Study on Data Leakage in Recommender System Offline Evaluation.

Authors :
YITONG JI
AIXIN SUN
JIE ZHANG
CHENLIANG LI
Source :
ACM Transactions on Information Systems. Jul2023, Vol. 41 Issue 3, p1-27. 27p.
Publication Year :
2023

Abstract

Recommender models are hard to evaluate, particularly under offline setting. In this article, we provide a comprehensive and critical analysis of the data leakage issue in recommender system offline evaluation. Data leakage is caused by not observing global timeline in evaluating recommenders e.g., train/test data split does not follow global timeline. As a result, a model learns from the user-item interactions that are not expected to be available at the prediction time. We first show the temporal dynamics of user-item interactions along global timeline, then explain why data leakage exists for collaborative filtering models. Through carefully designed experiments, we show that all models indeed recommend future items that are not available at the time point of a test instance, as the result of data leakage. The experiments are conducted with four widely used baseline models—BPR, NeuMF, SASRec, and LightGCN, on four popular offline datasets—MovieLens- 25M, Yelp, Amazon-music, and Amazon-electronic, adopting leave-last-one-out data split.1 We further show that data leakage does impact models’ recommendation accuracy. Their relative performance orders thus become unpredictable with different amount of leaked future data in training. To evaluate recommendation systems in a realistic manner in offline setting, we propose a timeline scheme, which calls for a revisit of the recommendation model design. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
10468188
Volume :
41
Issue :
3
Database :
Academic Search Index
Journal :
ACM Transactions on Information Systems
Publication Type :
Academic Journal
Accession number :
163619587
Full Text :
https://doi.org/10.1145/3569930