2022
DOI: 10.48550/arxiv.2205.06532
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Addressing Confounding Feature Issue for Causal Recommendation

Abstract: In recommender system, some feature directly affects whether an interaction would happen, making the happened interactions not necessarily indicate user preference. For instance, short videos are objectively easier to be finished even though the user does not like the video. We term such feature as confounding feature, and video length is a confounding feature in video recommendation. If we fit a model on such interaction data, just as done by most data-driven recommender systems, the model will be biased to r… Show more

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