Confounding is a Pervasive Problem in Real World Recommender Systems
Confounding is a Pervasive Problem in Real World Recommender Systems
Unobserved confounding arises when an unmeasured feature influences both the treatment and the outcome, leading to biased causal effect estimates. This issue undermines observational studies in fields like economics, medicine, ecology or epidemiology. Recommender systems leveraging fully observed data seem not to be vulnerable to this problem. However many standard practices in recommender systems result in observed features being ignored, resulting in effectively the same problem. This paper will show that numerous common practices such as feature engineering, A/B testing and modularization can in fact introduce confounding into recommendation systems and hamper their performance. Several illustrations of the phenomena are provided, supported by simulation studies with practical suggestions about how practitioners may reduce or avoid the affects of confounding in real systems.
Alexander Merkov、David Rohde、Alexandre Gilotte、Benjamin Heymann
信息产业经济计算技术、计算机技术
Alexander Merkov,David Rohde,Alexandre Gilotte,Benjamin Heymann.Confounding is a Pervasive Problem in Real World Recommender Systems[EB/OL].(2025-08-14)[2025-08-24].https://arxiv.org/abs/2508.10479.点此复制
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