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An Optimized Collaborative Filtering Approach with Item Hierarchy-Interestingness

机译:具有项目层次感的优化协同过滤方法

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Collaborative filtering algorithm is one of the most successful recommender technologies and has been widely adopted in recommender systems. However, the traditional collaborative filtering always suffers from sparsity problem of dataset. Item resource has hierarchy itself, and people's interests are centralized in several hierarchies. In addition, rating is multivariate with several factors: user's interest and item's quality etc. The proposed algorithm makes corresponding modification based on the traditional algorithm with the ideas above. Experimental results show that the algorithm can guarantee the accuracy of the system recommended by the case, effectively alleviate the data sparsity problem.
机译:协同过滤算法是最成功的推荐技术之一,并已在推荐系统中广泛采用。然而,传统的协同过滤总是遭受数据集稀疏性的困扰。项目资源本身具有层次结构,人们的利益集中在几个层次结构中。另外,评级是多变量的,具有多个因素:用户的兴趣和项目的质量等。提出的算法在传统算法的基础上,根据上述思想进行了相应的修改。实验结果表明,该算法可以保证案例推荐系统的准确性,有效缓解了数据稀疏性问题。

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