知识图谱与数据可视化相结合的影视剧分析系统的实现

F. Yang, Yong Yue, Gangmin Li
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引用次数: 0

摘要

近年来制作了越来越多的电影和电视剧,但只有少数在市场上取得了成功。因此,对影视剧成功因素的分析和推测,对于制作方和投资方来说都是非常重要的。现有的分析平台仅对某一时期影视剧产生的效益进行分析,缺乏预测和推理能力。为了分析影响影视剧成功的关键因素,为制片人和投资者提供参考,我们设计并实现了一个结合知识图谱和数据可视化技术的影视剧分析系统。首先,我们抓取豆瓣网站上的影视剧信息和用户评论;然后,利用OpenUE工具箱提取实体和关系,利用Neo4j构建并存储影视剧中的知识图谱。在此基础上,我们利用改进的TransR算法进行知识补全和推理。最后,结合知识图谱对热门影视剧的成功因素进行分析,并将分析结果以各种图表形式可视化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Implementation of Movies and TV Plays Analysis System Combined with Knowledge Graph and Data Visualization
More and more movies and television plays have been produced in recent years, but a few have succeeded in the market. Therefore, the analysis and speculation of the success factors of movies and television plays are very important for the producers and investors. The existing analysis platform only analyzes the benefits generated by movies and television dramas in a certain period and lacks the ability of prediction and reasoning. To analyze the key factors affecting the success of movies and television dramas and provide a reference for producers and investors, we design and implement a movies and television plays analysis system combined with a knowledge graph and data visualization technology. First of all, we crawl the information of movies and television plays and user comments on the Douban website; Then, the entities and relationships are extracted by OpenUE toolkit, and Neo4j is used to construct and store the knowledge graph in movies and television plays. On this basis, we utilize the improved TransR algorithm for knowledge completion and reasoning. Finally, combined with the knowledge graph, we analyze the success factors of popular movies and TV plays and visualize the analysis results in various chart types.
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