This research paper introduces IViDR, a novel debiasing method for recommender systems that effectively mitigates dual latent confounding biases stemming from unobserved factors influencing both user-item interactions and item exposure.
The proposed End-to-End Adaptive Local Learning (TALL) framework effectively counters mainstream bias in recommender systems by addressing the discrepancy modeling problem and the unsynchronized learning problem.