학술논문

Collaborative Filtering Recommender System Based on Memory Based in Twitter Using Decision Tree Learning Classification (Case Study: Movie on Netflix)
Document Type
Conference
Source
2022 International Conference on Advanced Creative Networks and Intelligent Systems (ICACNIS) Advanced Creative Networks and Intelligent Systems (ICACNIS), 2022 International Conference on. :1-6 Nov, 2022
Subject
Computing and Processing
Signal Processing and Analysis
Social networking (online)
Collaborative filtering
Blogs
Motion pictures
Decision trees
Intelligent systems
Recommender systems
Recommender System
Netflix
Twitter
Memory Based
Collaborative Filtering
Decision Tree Learning Classification
Language
Abstract
In this modern era, watching movie becomes the activity that most people like to do. Netflix is one of the platforms that provides an easily accessible movie streaming services because the user doesn’t have to go to the theater. Because of the large number of movies that can be watched on Netflix, this research will develop a Recommender System that will ease people to watch the movies based on their preferences. The method used in this research is Memory-Based Collaborative Filtering (CF) Method. This method consists of two kinds which are User-Based CF Method and Item Based CF Method. Both of those methods will be combined with the Decision Tree Learning Classification Type C4.5 to determine which method suit better for the dataset. RMSE (Root Mean Squared Error) method, precision and recall will be used to evaluate the models. Dataset used is dataset which Dataset taken fresh from Twitter which will be merged with ratings from several websites (IMDB, Rotten Tomatoes, Metacritic). Website data rating will be added to decrease the possibility of sparsity. Result in this research shows that User-Based CF is better suit for the dataset by having 89% average precision and 88% average recall. Those result proves that MemoryBased CF can be combined with Decision Tree Learning Classification because it has high precision and recall value.