一种改进电影推荐评级预测的混合推荐系统

Nikorn Kannikaklang, S. Wongthanavasu, W. Thamviset
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引用次数: 2

摘要

由于新冠疫情,网络电影非常受欢迎。虽然电影院没有服务,人们被隔离,但电影是放松和治疗压力的最佳选择。目前,推荐系统被广泛集成到许多电影应用平台中。混合推荐系统是提高系统性能的一种很有前途的技术,特别是在冷启动、数据稀疏性和可扩展性方面。本文提出了矩阵分解、有偏矩阵分解和因子矩阵分解的混合方法来解决上述缺陷问题。仿真结果表明,与传统方法相比,该混合算法的RMSE和MAE分别降低了约11.91%和10.70%。此外,该算法具有较强的可扩展性。虽然数据集的数量大大增加了10倍,但它仍然有效地执行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Hybrid Recommender System for Improving Rating Prediction of Movie Recommendation
Because of COVID-19 pandemic, online movies are now extremely popular. While the movie theaters have not serviced and people are staying quarantine, movies are the best choice for relaxing and treating stress. In present, recommender systems are widely integrated into many platforms of movie applications. A hybrid recommender system is one promising technique to improve the system performance, especially for cold-start, data sparsity, and scalability. This paper proposed a hybrid of matrix factorization, biased matrix factorization, and factor wise matrix factorization to solve all mentioned drawback problems. Simulation shows that the proposed hybrid algorithm can decrease approximately 11.91% and 10.70% for RMSE and MAE, respectively, when compared with the traditional methods. In addition, the proposed algorithm is capable of scalability. While the number of datasets is tremendously increased by 10 times, it is still effectively executed.
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