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Collaborative filtering recommendation based on dynamic changes of user interest

机译:基于用户兴趣动态变化的协同过滤推荐

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摘要

Collaborative filtering is probably the most familiar and most widely implemented recommendation algorithm. However, traditional collaborative filtering methods focus only on rating data to generate recommendation; they do not consider useful information like item genre and evaluation time, which affect the quality of the system's recommendation seriously. In similarity computation, traditional algorithms use all items; they do not introduce genre component in correlation between user and item. Furthermore, they do not consider the influence of time on user's interests; giving the same treatment to user's score at different time. To address this issue, a new item-based collaborative filtering algorithm is proposed to exploit genre information in each item and reflect dynamic changes over time of user's preferences. The proposed algorithm endows each score with a weight function which keeps user's recent, long and periodic interest, and attenuate user's old short interest. Experimental results from Movielens data set show that the new algorithm outperforms the traditional item-based collaborative filtering algorithms.
机译:协同过滤可能是最熟悉,应用最广泛的推荐算法。但是,传统的协作过滤方法仅关注于评级数据以生成推荐。他们不会考虑有用的信息,例如项目类型和评估时间,这些信息会严重影响系统推荐的质量。在相似度计算中,传统算法会使用所有项目。他们没有在用户和商品之间的相关性中引入体裁成分。此外,他们没有考虑时间对用户兴趣的影响;在不同时间对用户的分数进行相同的处理。为了解决这个问题,提出了一种新的基于项目的协同过滤算法,以利用每个项目中的类型信息并反映用户偏好随时间的动态变化。所提出的算法赋予每个分数以权重函数,该权重函数保持用户的近期兴趣,长期兴趣和周期性兴趣,并减弱用户的旧空头兴趣。 Movielens数据集的实验结果表明,该新算法优于传统的基于项目的协作过滤算法。

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