Top-N Recommendation for Shared Accounts

Koen Verstrepen, Bart Goethals
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引用次数: 32

Abstract

Standard collaborative filtering recommender systems assume that every account in the training data represents a single user. However, multiple users often share a single account. A typical example is a single shopping account for the whole family. Traditional recommender systems fail in this situation. If contextual information is available, context aware recommender systems are the state-of-the-art solution. Yet, often no contextual information is available. Therefore, we introduce the challenge of recommending to shared accounts in the absence of contextual information. We propose a solution to this challenge for all cases in which the reference recommender system is an item-based top-N collaborative filtering recommender system, generating recommendations based on binary, positive-only feedback. We experimentally show the advantages of our proposed solution for tackling the problems that arise from the existence of shared accounts on multiple datasets.
共享帐户Top-N推荐
标准的协同过滤推荐系统假设训练数据中的每个帐户代表一个用户。但是,多个用户通常共享一个帐户。一个典型的例子是一个单一的购物帐户为整个家庭。传统的推荐系统在这种情况下失效了。如果上下文信息可用,上下文感知推荐系统是最先进的解决方案。然而,通常没有上下文信息可用。因此,我们引入了在缺乏上下文信息的情况下向共享帐户推荐的挑战。对于参考推荐系统是基于项目的top-N协同过滤推荐系统的所有情况,我们提出了一种解决方案,该系统基于二进制、纯正反馈生成推荐。我们通过实验证明了我们提出的解决方案在解决多个数据集上存在共享帐户所产生的问题方面的优势。
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