基于机器学习的个性化电影推荐系统研究与实现

Xianting Feng, Jianming Hu, Xin Zhu
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引用次数: 2

摘要

随着互联网产业的发展,信息时代呈现出“信息超载”的趋势,人们提取有效信息的效率越来越低。为了缓解人们的浏览压力,本文引用美国Robert Armstrong等人1995年提出的个性化推荐系统原理,实现了一种基于机器学习的协同过滤算法用于电影推荐。首先,根据用户的真实行为对评分数据进行预处理和可视化。然后实现上述算法,并利用测试指标来衡量推荐系统的性能,优化系统参数。最后运用软件工程和Java前端知识,基于Spring+SpringMVC+Mybaits (SSM)进行需求分析、功能分析、非功能分析并建立数据库。最后,利用java数据库连接(JDBC)与数据库Mysql进行链接,最终实现了一个具有基本功能的电影推荐系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Based Personalized Movie Research and Implementation of Recommendation System
With the development of the Internet industry, the information age presents a trend of “information overload”, and people's efficiency in extracting effective information is getting lower and lower. In order to relieve people's browsing pressure, this paper implements a collaborative filtering algorithm based on machine learning for the movie recommendation, citing the principle of personalized recommendation system proposed by Robert Armstrong and others in the United States in 1995. First, the rating data is preprocessed and visualized in consideration of the user's real behavior. Then implement the algorithm mentioned above, and use the test indicators to measure the performance of the recommender system and optimize the system parameters. Finally, using software engineering and Java front-end knowledge based on Spring+SpringMVC+Mybaits (SSM) to conduct demand analysis, functional analysis, non-functional analysis and establish a database. At last, use java database connectivity (JDBC) to link the database Mysql, and finally realized a movie recommender system with basic functions.
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