KuaiRand: An Unbiased Sequential Recommendation Dataset with Randomly Exposed Videos
Chongming Gao,
Shijun Li,
Yuan Zhang
et al.
Abstract:Recommender systems deployed in real-world applications can have inherent exposure bias, which leads to the biased logged data plaguing the researchers. A fundamental way to address this thorny problem is to collect users' interactions on randomly expose items, i.e., the missing-at-random data. A few works have asked certain users to rate or select randomly recommended items, e.g., Yahoo! [16], Coat [22], and OpenBandit [19]. However, these datasets are either too small in size or lack key information, such as… Show more
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