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A collaborative filtering recommendation algorithm based on dynamic and reliable neighbors

机译:基于动态可靠邻居的协同过滤推荐算法

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Collaborative filtering algorithm is currently the most widely used and a very efficient technology in personalized recommendation system. To overcome several defects in the research of the traditional Item-based collaborative filtering algorithm, this paper presents a optimized algorithm in two aspects, which are the selection of neighbors and the prediction of ratings. Firstly, different numbers of neighbors for the items and users are dynamically selected according to the similarity threshold, then the reliability of neighbors of both items and users are calculated. Finally, the more reliable neighbors was selected to predict the results. Experimental with MovieLens data set shows that the new algorithm outperforms the traditional Item-based algorithms significantly on accuracy of predictions.
机译:协作过滤算法是当前个性化推荐系统中使用最广泛,最有效的技术。为了克服传统的基于项目的协同过滤算法研究中的若干缺陷,本文从邻居的选择和等级的预测两个方面提出了一种优化的算法。首先,根据相似度阈值动态选择物品和用户的邻居数量,然后计算物品和用户的邻居可靠性。最后,选择更可靠的邻居来预测结果。使用MovieLens数据集进行的实验表明,新算法在预测准确性方面明显优于传统的基于项目的算法。

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