User-Based Collaborative Filtering Using Agglomerative Clustering on Recommender System

Muhammad, Malim (2021) User-Based Collaborative Filtering Using Agglomerative Clustering on Recommender System. In: ISTED 2021, 17-18 July 2021, Purwokerto, Indonesia.

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Content-based, collaborative filtering, demographic, knowledge-based, and hybrid recommender systems are the five categories of recommendation systems. User-based collaborative filtering and item-based collaborative filtering are the two types of collaborative filtering. However, the user-based approaches can be claimed to represent the user; researchers will employ them here. This method is more concerned with the user's likeness, or similarity than with the user's evaluated item. The accuracy of user-based collaborative filtering approaches employing agglomerative Clustering with similarity computations, i.e., cosine similarity, is improved in this study. MovieLens ( provided the researchers with the data they needed. Between January 9, 1995, and October 16, 2016, a total of 100004 ratings for 9,125 films were collected from 671 individuals. At least 20 movies have been rated by each user. Each rating has a value of 1 to 5. The data utilized for testing is five value data from each user. In other words, 3,355 data points were tested in total. Using the single linkage clustering approach to cluster films in the use-based method has been shown to improve the accuracy of results that differ significantly between scenarios one and two, namely 3,409 and 3.26. MAE and RMSE are the accuracy gauges utilized in the analysis, and the smaller the value (closer to zero), the better the program results.

Item Type: Conference or Workshop Item (Paper)
Uncontrolled Keywords: recommended system user-based collaborative filtering agglomerative clustering
Subjects: H Social Sciences > H Social Sciences (General)
Depositing User: EAI Editor IV
Date Deposited: 11 Nov 2021 15:41
Last Modified: 11 Nov 2021 15:41

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