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EBCR: Empirical Bayes concordance ratio method to improve similarity measurement in memory-based collaborative filtering

机译:EBCR:经验贝叶斯的一致性比率方法,以提高基于内存的协作滤波中的相似性测量

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Recommender systems aim to provide users with a selection of items, based on predicting their preferences for items they have not yet rated, thus helping them filter out irrelevant ones from a large product catalogue. Collaborative filtering is a widely used mechanism to predict a particular user’s interest in a given item, based on feedback from neighbour users with similar tastes. The way the user’s neighbourhood is identified has a significant impact on prediction accuracy. Most methods estimate user proximity from ratings they assigned to co-rated items, regardless of their number. This paper introduces a similarity adjustment taking into account the number of co-ratings. The proposed method is based on a concordance ratio representing the probability that two users share the same taste for a new item. The probabilities are further adjusted by using the Empirical Bayes inference method before being used to weight similarities. The proposed approach improves existing similarity measures without increasing time complexity and the adjustment can be combined with all existing similarity measures. Experiments conducted on benchmark datasets confirmed that the proposed method systematically improved the recommender system’s prediction accuracy performance for all considered similarity measures.
机译:推荐系统旨在为用户提供各种项目,基于预测其对其尚未评级的物品的偏好,从而帮助他们从大型产品目录中过滤出无关的项目。协同滤波是一种广泛使用的机制,基于具有类似品味的邻居用户的反馈来预测特定用户对给定项目的兴趣。识别用户邻域的方式对预测准确性产生重大影响。大多数方法估计用户靠近他们分配给共同额定物品的评级,无论其数量如何。本文介绍了考虑到共同额定值的数量的相似性调整。该方法基于表示两个用户对新项目的相同品味的概率的一致性比率。通过使用经验贝叶斯推理方法进一步调整概率,然后用于重量相似性。该方法提高了现有的相似性测量,而不会增加时间复杂性,并且调整可以与所有现有的相似度措施相结合。在基准数据集上进行的实验证实,所提出的方法系统地改善了所有考虑的相似性测量的推荐系统的预测精度性能。

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