Transforming Movie Recommendations with Advanced Machine Learning: A Study of NMF, SVD,and K-Means Clustering

Yan, Yubing, Moreau, Camille, Wang, Zhuoyue, Fan, Wenhan, Fu, Chengqian

arXiv.org Artificial Intelligence 

Keywords-recommendation system; machine learning; Non-groups based on their viewing patterns. Agent Recurrent Deterministic Policy Gradient (MA-RDPG) The proliferation of digital content has necessitated the algorithm, as suggested by Zhao et al., this research aims to development of effective recommendation systems to aid users optimize overall system performance through enhanced in navigating vast amounts of data. This research aims to explore and implement advanced machine Previous studies have extensively explored collaborative learning techniques [1-6] to create a high-performing movie filtering techniques for recommendation systems. The study addresses the following (2001) [13] demonstrated the effectiveness of matrix research questions: What are the most effective machine factorization in uncovering latent user-item interactions. How do et al. (2009) [14] further refined these techniques, leading to these models compare in terms of accuracy and relevance?

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