2021
DOI: 10.48550/arxiv.2105.13881
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CausCF: Causal Collaborative Filtering for RecommendationEffect Estimation

Xu Xie,
Zhaoyang Liu,
Shiwen Wu
et al.

Abstract: To improve user experience and profits of corporations, modern industrial recommender systems usually aim to select the items that are most likely to be interacted with (e.g., clicks and purchases). However, they overlook the fact that users may purchase the items even without recommendations. The real effective items are the ones which can contribute to purchase probability uplift. To select these effective items, it is essential to estimate the causal effect of recommendations. Nevertheless, it is difficult … Show more

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