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TCARS: Time- and Community-Aware Recommendation System

机译:TCARS:具有时间和社区意识的推荐系统

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With the abundance of information produced by users on items (e.g., purchase or rating histories), recommender systems are a major ingredient of online systems such as e-stores and service providers. Recommendation algorithms use information available from users-items interactions and their contextual data to provide a list of potential items for each user. These algorithms are constructed based on similarity between users and/or items (e.g., a user is likely to purchase the same items as his/her most similar users). In this work, we introduce a novel time-aware recommendation algorithm that is based on identifying overlapping community structure among users. Users' interests might change over time, and accurate modeling of dynamic users' preferences is a challenging issue in designing efficient personalized recommendation systems. The users-items interaction network is often highly sparse in real systems, for which many recommenders fail to provide accurate predictions. The proposed overlapping community structure amongst the users helps in minimizing the sparsity effects. We apply the proposed algorithm on two real-world benchmark datasets and show that it overcomes these challenges. The proposed algorithm shows better precision than a number of state-of-the-art recommendation methods.
机译:由于用户产生的关于物品的大量信息(例如,购买或评级历史),推荐系统是在线系统(例如,电子商店和服务提供商)的主要组成部分。推荐算法使用可从用户-项目交互及其上下文数据中获得的信息来为每个用户提供潜在项目的列表。这些算法是基于用户和/或商品之间的相似性构建的(例如,用户可能会购买与其最相似的用户相同的商品)。在这项工作中,我们介绍了一种新颖的基于时间的推荐算法,该算法基于识别用户之间重叠的社区结构。用户的兴趣可能会随着时间而变化,在设计有效的个性化推荐系统时,对动态用户的偏好进行准确建模是一个具有挑战性的问题。用户-项目交互网络在实际系统中通常非常稀疏,许多推荐者未能提供准确的预测。在用户之间提议的重叠社区结构有助于最大程度地减少稀疏效应。我们将提出的算法应用于两个现实世界的基准数据集,并证明它克服了这些挑战。与许多最新的推荐方法相比,该算法显示出更好的精度。

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