Cross-Dataset Propensity Estimation for Debiasing Recommender Systems

Li, Fengyu, Dean, Sarah

arXiv.org Artificial Intelligence 

Datasets for training recommender systems are often subject to distribution shift induced by users' and recommenders' selection biases. In this paper, we study the impact of selection bias on datasets with different quantization. We then leverage two differently quantized datasets from different source distributions to mitigate distribution shift by applying the inverse probability scoring method from causal inference.

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