Title
Feature-Level Attentive ICF for Recommendation
Abstract
AbstractItem-based collaborative filtering (ICF) enjoys the advantages of high recommendation accuracy and ease in online penalization and thus is favored by the industrial recommender systems. ICF recommends items to a target user based on their similarities to the previously interacted items of the user. Great progresses have been achieved for ICF in recent years by applying advanced machine learning techniques (e.g., deep neural networks) to learn the item similarity from data. The early methods simply treat all the historical items equally and recently proposed methods attempt to distinguish the different importance of historical items when recommending a target item. Despite the progress, we argue that those ICF models neglect the diverse intents of users on adopting items (e.g., watching a movie because of the director, leading actors, or the visual effects). As a result, they fail to estimate the item similarity on a finer-grained level to predict the user’s preference to an item, resulting in sub-optimal recommendation. In this work, we propose a general feature-level attention method for ICF models. The key of our method is to distinguish the importance of different factors when computing the item similarity for a prediction. To demonstrate the effectiveness of our method, we design a light attention neural network to integrate both item-level and feature-level attention for neural ICF models. It is model-agnostic and easy-to-implement. We apply it to two baseline ICF models and evaluate its effectiveness on six public datasets. Extensive experiments show the feature-level attention enhanced models consistently outperform their counterparts, demonstrating the potential of differentiating user intents on the feature-level for ICF recommendation models.
Year
DOI
Venue
2022
10.1145/3490477
ACM Transactions on Information Systems
Keywords
DocType
Volume
Attention, collaborative filtering, diverse preference, item-based recommendation
Journal
40
Issue
ISSN
Citations 
4
1046-8188
2
PageRank 
References 
Authors
0.44
51
6
Name
Order
Citations
PageRank
Zhiyong Cheng154632.55
Fan Liu220.44
Shenghan Mei320.44
Yangyang Guo420.44
Lei Zhu585451.69
Liqiang Nie62975131.85