TL;DR
This paper introduces DecRS, a causal modeling approach for recommender systems that reduces bias amplification by addressing confounders through backdoor adjustment, improving recommendation fairness and accuracy.
Contribution
It proposes a novel deconfounded recommender system with an approximation operator for backdoor adjustment, applicable to existing models like FM and NFM.
Findings
DecRS outperforms baseline models on benchmark datasets.
The method effectively reduces bias amplification.
Dynamic regulation improves recommendation quality.
Abstract
Recommender systems usually amplify the biases in the data. The model learned from historical interactions with imbalanced item distribution will amplify the imbalance by over-recommending items from the major groups. Addressing this issue is essential for a healthy ecosystem of recommendation in the long run. Existing works apply bias control to the ranking targets (e.g., calibration, fairness, and diversity), but ignore the true reason for bias amplification and trade-off the recommendation accuracy. In this work, we scrutinize the cause-effect factors for bias amplification, identifying the main reason lies in the confounder effect of imbalanced item distribution on user representation and prediction score. The existence of such confounder pushes us to go beyond merely modeling the conditional probability and embrace the causal modeling for recommendation. Towards this end, we…
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