Personalized Intelligent Recommendation of Cultural Resources Based on User Preference Collaborative Filtering Algorithm

Ping-Rong Wang
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Abstract

With the rapid growth of user information, more and more netizens hope to obtain more comprehensive and effective useful resources through the Internet. However, the traditional information retrieval system can not meet the requirements of its very large amount of data, especially complex and extremely valuable because of the low efficiency of algorithm, low accuracy and limited database resources. Therefore, this paper proposes a collaborative filtering algorithm based on user preference to study the personalized recommendation of ethnic cultural resources. Firstly, this paper introduces the concept, function and characteristics of ethnic cultural resources, and then studies the collaborative filtering algorithm based on users' preferences. On this basis, the personalized recommendation framework of ethnic cultural resources is studied, and the operation performance of this framework is tested. The final test results show that the personalized recommendation method of ethnic cultural resources based on user preference collaborative filtering algorithm is different from other similar applications. Using the same attribute set for the same purpose can obtain more similarity information. Therefore, it can be seen that the personalized recommendation method of ethnic cultural resources based on user preference collaborative filtering algorithm can meet the basic needs.
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基于用户偏好协同过滤算法的文化资源个性化智能推荐
随着用户信息的快速增长,越来越多的网民希望通过互联网获得更全面有效的有用资源。然而,传统的信息检索系统由于算法效率低、准确率低、数据库资源有限等原因,无法满足其海量数据,尤其是复杂而又极具价值的数据的需求。因此,本文提出了一种基于用户偏好的协同过滤算法来研究民族文化资源的个性化推荐。本文首先介绍了民族文化资源的概念、功能和特点,然后研究了基于用户偏好的协同过滤算法。在此基础上,研究了民族文化资源个性化推荐框架,并对该框架的运行性能进行了测试。最终的测试结果表明,基于用户偏好协同过滤算法的民族文化资源个性化推荐方法不同于其他同类应用。使用相同的属性集用于相同的目的可以获得更多的相似度信息。由此可见,基于用户偏好协同过滤算法的民族文化资源个性化推荐方法能够满足基本需求。
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