A Review on the Movie Recommendation System Using Big Data

Chandan Kumar Sangewar, Chinmay Pagey, Sakshi Chauhan, Suganeshwari G
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引用次数: 2

Abstract

The project will be built on a recommendation system, particularly for material pertaining to digital media such as movies or web series. A method known as collaborative filtering is going to be the approach that forms the basis of our research. In order to carry out the implementation of this model, we will make use of the ml-25m dataset, as well as spark (MLib), the ideas of matrix factorization, and the ALS algorithm. The distributed computing architecture that Spark offers will not only make it possible to analyse massive datasets quickly and effectively, but with the use of Deep Learning,it will also increase the scalability and performance of the system
基于大数据的电影推荐系统综述
该项目将建立在一个推荐系统上,特别是与数字媒体有关的材料,如电影或网络连续剧。一种被称为协同过滤的方法将成为我们研究的基础。为了实现这个模型,我们将使用ml-25m数据集,以及spark (MLib)、矩阵分解的思想和ALS算法。Spark提供的分布式计算架构不仅可以快速有效地分析大量数据集,而且通过使用深度学习,还可以提高系统的可扩展性和性能
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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