数字文化资源个性化推荐系统

Shufeng Ye, Yi Yang, Weixing Huang, Jian Wang
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引用次数: 0

摘要

公共数字文化资源具有数量大、分类复杂、同质性强的特点。用户很难在海量资源中高效地找到真正感兴趣的资源。个性化推荐能够捕捉用户的兴趣,主动推荐用户喜欢的资源,是解决上述问题的关键技术。针对传统的协同过滤方法在公共数字文化共享服务中遇到的用户文化行为数据的高稀疏性和用户文化兴趣变化快的问题。基于公共数字文化资源语义分析的特点和推荐算法的特点,提出了协同过滤推荐的两种优化方法。通过实验验证了该方法解决上述问题的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Personalized Recommender System for Digital Cultural Resources
Public digital cultural resources have the characteristics of large amount, complicated classification, and strong homogeneity. It is difficult for users to efficiently find resources of real interest in massive resources. It is a key technology to solve the above problems that personalized recommendation can capture user's interest and actively recommend favorite resources. This paper addresses the problem of high sparseness of user cultural behavior data and the rapid changes in user cultural interest encountered in the traditional collaborative filtering approach in the public digital culture sharing service. Based on the characteristics of the semantic analysis of public digital cultural resources and the characteristics of the recommended algorithm, two optimization methods for collaborative filtering recommendation are proposed. The effectiveness of the proposed method to solve the above problems is verified by experiments.
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