Design and Implementation of Movie Recommender System Based on Graph Database

N. Yi, Chunfang Li, Xin Feng, Minyong Shi
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引用次数: 17

Abstract

with the continuous development of Internet technology, information overload is becoming more and more serious. It's getting harder to get useful information from the network. Although the search engine can help users find information they need from the vast amounts of information in a certain extent, but cannot completely solve the problem of information overload, when users cannot accurately describe the information they need, you need to recommend system to help users find valuable information for users. So recommender systems are becoming more and more important. The movie recommender system implemented in this paper is based on the traditional user-based collaborative filtering algorithm, and the user project scoring matrix is pre filled. At the same time, database technology of this system uses graph database which is good at dealing with complex relations. In data visualization, the degree of recommendation of a movie is expressed by the size of the node and the thickness of the edge, so as to improve the user experience.
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基于图数据库的电影推荐系统的设计与实现
随着互联网技术的不断发展,信息超载问题越来越严重。从网络上获取有用的信息越来越难了。虽然搜索引擎可以在一定程度上帮助用户从海量的信息中找到自己需要的信息,但是并不能完全解决信息过载的问题,当用户无法准确描述自己需要的信息时,就需要推荐系统来帮助用户为用户找到有价值的信息。因此,推荐系统变得越来越重要。本文实现的电影推荐系统是基于传统的基于用户的协同过滤算法,并对用户项目评分矩阵进行预填充。同时,本系统的数据库技术采用了善于处理复杂关系的图形数据库。在数据可视化中,通过节点的大小和边缘的厚度来表示电影的推荐程度,从而提高用户体验。
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