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Deep Item-based Collaborative Filtering for Top-N Recommendation

Computer Science

Deep Item-based Collaborative Filtering for Top-N Recommendation

F. Xue, X. He, et al.

This research, conducted by Feng Xue, Xiangnan He, Xiang Wang, Jiandong Xu, Kai Liu, and Richang Hong, introduces DeepICF — a neural item-based collaborative filtering that models nonlinear and higher-order item relationships beyond pairwise interactions, and shows on MovieLens and Pinterest that higher-order modeling and an attention-augmented variant (DeepICF+a) improve recommendation performance.... show more
Abstract
Item-based Collaborative Filtering (ICF) has been widely adopted in recommender systems due to its strength in modeling user interests and ease of online personalization. Existing learning-based ICF methods largely consider only linear and shallow relationships between items, which are insufficient to capture users’ complex decision-making. This work proposes DeepICF, a more expressive ICF solution that models nonlinear and higher-order item relationships. Beyond pairwise (second-order) item interactions, it considers interactions among all historical item pairs via neural networks, enabling differentiation of which itemsets in a user’s profile are more influential for predicting a target item. Experiments on MovieLens and Pinterest verify the positive effect of modeling higher-order interactions with nonlinear neural networks. Furthermore, integrating an attention mechanism to refine second-order interaction modeling (DeepICF+a) yields additional performance gains.
Publisher
Published On
Authors
Feng Xue, Xiangnan He, Xiang Wang, Jiandong Xu, Kai Liu, Richang Hong
Tags
Item-based Collaborative Filtering
DeepICF
Higher-order Item Interactions
Neural Networks
Attention Mechanism
Recommender Systems
Personalization
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