Debiasing Item-to-Item Recommendations With Small Annotated Datasets
Item-to-item recommendation (e.g., “People who like this also like…”) is a ubiquitous and important type of recommendation in real-world systems. Observational data from historical interaction logs abound in these settings. However, since virtually all observational data exhibit biases, such as time-in-inventory or interface biases, it is crucial that recommender algorithms account for these biases. In this paper, we develop a principled approach for item-to-item recommendation based on causal inference and present a practical and highly effective method for estimating the causal parameters from a small annotated dataset. Empirically, we find that our approach substantially improves upon existing methods while requiring only small amounts of annotated data.
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Debiasing Item-to-Item Recommendations With Small Annotated Datasets Release
October 13, 2020
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