Revealing and Utilizing In-group Favoritism for Graph-based Collaborative Filtering
Jung, Hoin, Cho, Hyunsoo, Choi, Myungje, Lee, Joowon, Park, Jung Ho, Kang, Myungjoo
–arXiv.org Artificial Intelligence
When it comes to a personalized item recommendation system, It is essential to extract users' preferences and purchasing patterns. Assuming that users in the real world form a cluster and there is common favoritism in each cluster, in this work, we introduce Co-Clustering Wrapper (CCW). We compute co-clusters of users and items with co-clustering algorithms and add CF subnetworks for each cluster to extract the in-group favoritism. Combining the features from the networks, we obtain rich and unified information about users. We experimented real world datasets considering two aspects: Finding the number of groups divided according to in-group preference, and measuring the quantity of improvement of the performance.
arXiv.org Artificial Intelligence
Apr-23-2024