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Item-network-based collaborative filtering: A personalized recommendation method based on a user's item network

机译:基于物品网络的协同过滤:一种基于用户物品网络的个性化推荐方法

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摘要

Recommendation systems are becoming important with the increased availability of online services. A typical approach used in recommendations is collaborative filtering. However, because it largely relies on external relations, such as items-to-items or users-to-users, problems occur when the relations are biased or insufficient. Focusing on that limitation, we here suggest a new method, item-network-based collaborative filtering, which recommends items through four steps. First, the system constructs item networks based on users' item usage history and calculates three types of centrality: betweenness, closeness, and degree. Next, the system secures significant items based on the betweenness centrality of the items in each user's item network. Then, by using the closeness and degree centrality of the secured items, the algorithm predicts preference scores for items and their rank orders from each user's perspective. In the last step, the system organizes a recommendation list based on the predicted scores. To evaluate the performance of our system, we applied it to a sample dataset of 196 Last.fm users' listening history and compared the results with those from existing collaborative filtering methods. The results showed that the suggested method performed better than the basic item-based and user-based collaborative filtering methods in terms of Accuracy, Recall, and Fl scores for top-k recommendations. This indicates that an individual user's item relations can be utilized to remedy the problems occurring when the external relations are biased or insufficient.
机译:随着在线服务可用性的提高,推荐系统变得越来越重要。推荐中使用的一种典型方法是协作过滤。但是,由于它很大程度上依赖于外部关系,例如项对项或用户对用户,因此当关系存在偏见或不足时会出现问题。针对此限制,我们在这里提出一种新方法,即基于项目网络的协作过滤,该方法通过四个步骤来推荐项目。首先,系统根据用户的物品使用历史来构建物品网络,并计算三种类型的集中度:中间度,亲密度和程度。接下来,系统根据每个用户的项目网络中项目的中间性来保护重要项目。然后,通过使用受保护项目的紧密度和中心度,该算法从每个用户的角度预测项目的偏好得分及其等级顺序。在最后一步,系统根据预测分数组织推荐列表。为了评估系统的性能,我们将其应用于196个Last.fm用户的收听历史记录的样本数据集,并将结果与​​现有协作过滤方法的结果进行了比较。结果表明,在前k个推荐的准确性,召回率和Fl得分方面,建议的方法比基于项目和用户的基本协作过滤方法表现更好。这表明可以利用单个用户的项目关系来纠正在外部关系有偏见或不足时出现的问题。

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