Please use this identifier to cite or link to this item: http://repository.ipb.ac.id/handle/123456789/60601
Title: Making Recommender Module in OpenCart Using Item-Based Collaborative Filtering Method
Pembuatan Modul Rekomendasi pada OpenCart Menggunakan Metode Item-Based Collaborative Filtering
Authors: Nurhadryani, Yani
Nuryunita, Kirana
Keywords: adjusted cosine similarity
e-commerce
item-based collaborative filtering
mean absolute error
recommender system
weighted sum
Issue Date: 2012
Publisher: IPB ( Bogor Agricultural University )
Abstract: This research aims to add a recommender module in OpenCart CMS. One of the method is item-based collaborative filtering that can reduce the execution time of calculation. This study uses adjusted cosine similarity to calculate the similarity between books, weighted sum method to calculate the books rate prediction, and mean absolute error to calculate recommendacy accuracy. In order to get the recommendation, user have to login and give ratings to the books. Then, adjusted cosine similarity calculates the similarity between books based on user’s rate. Based on the similarities between books, weighted sum method calculates the books rate prediction. Before a book is recommended to the user, type of book from the prediction are first matched with the type of book rated by the user. This research uses 300 books and 30 users. The result shows that only 17 users can get recommendations. Evaluation is conducted by analyzing the execution time and recommendacy accuracy. It is found that the execution time is 1.60 seconds and the mean absolute error is 0.15.
URI: http://repository.ipb.ac.id/handle/123456789/60601
Appears in Collections:UT - Computer Science

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