TY - JOUR
T1 - SGCF: Inductive Movie Recommendation System with Strongly Connected Neighborhood Sampling
AU - Baskoro, Jatmiko budi
AU - Yulianti, Evi
PY - 2022/2/27
Y1 - 2022/2/27
N2 - User and item embeddings are key resources for the development of recommender systems. Recent works has exploited connectivity between users and items in graphs to incorporate the preferences of local neighborhoods into embeddings. Information inferred from graph connections is very useful, especially when interaction between user and item is sparse. In this paper, we propose graphSAGE Collaborative Filtering (SGCF), an inductive graph-based recommendation system with local sampling weight. We conducted an experiment to investigate recommendation performance for SGCF by comparing its performance with baseline and several SGCF variants in Movielens dataset, which are commonly used as recommendation system benchmark data. Our experiment shows that weighted SGCF perform 0.5% higher than benchmark in NDCG@5 and NDCG@10, and 0.8% in NDCG@100. Weighted SGCF perform 0.79% higher than benchmark in recall@5, 0.4% increase for recall@10 and 1.85% increase for recall@100. All the improvements are statistically significant with p-value < 0.05.
AB - User and item embeddings are key resources for the development of recommender systems. Recent works has exploited connectivity between users and items in graphs to incorporate the preferences of local neighborhoods into embeddings. Information inferred from graph connections is very useful, especially when interaction between user and item is sparse. In this paper, we propose graphSAGE Collaborative Filtering (SGCF), an inductive graph-based recommendation system with local sampling weight. We conducted an experiment to investigate recommendation performance for SGCF by comparing its performance with baseline and several SGCF variants in Movielens dataset, which are commonly used as recommendation system benchmark data. Our experiment shows that weighted SGCF perform 0.5% higher than benchmark in NDCG@5 and NDCG@10, and 0.8% in NDCG@100. Weighted SGCF perform 0.79% higher than benchmark in recall@5, 0.4% increase for recall@10 and 1.85% increase for recall@100. All the improvements are statistically significant with p-value < 0.05.
KW - recommendation system
KW - collaborative filtering
KW - graph neural network
UR - https://jiki.cs.ui.ac.id/index.php/jiki/article/view/1066
U2 - 10.21609/jiki.v15i1.1066
DO - 10.21609/jiki.v15i1.1066
M3 - Article
SN - 2502-9274
VL - 15
SP - 55
EP - 67
JO - Jurnal Ilmu Komputer dan Informasi
JF - Jurnal Ilmu Komputer dan Informasi
IS - 1
ER -