Item-based Collaborative Filtering with BERT
Tian Wang, Yuyangzi Fu
Abstract
In e-commerce, recommender systems have become an indispensable part of helping users explore the available inventory. In this work, we present a novel approach for item-based collaborative filtering, by leveraging BERT to understand items, and score relevancy between different items. Our proposed method could address problems that plague traditional recommender systems such as cold start, and "more of the same" recommended content. We conducted experiments on a large-scale realworld dataset with full cold-start scenario, and the proposed approach significantly outperforms the popular Bi-LSTM model.
Topics & Concepts
Collaborative filteringRecommender systemComputer scienceCold start (automotive)Scale (ratio)Artificial intelligenceInformation retrievalQuantum mechanicsAerospace engineeringPhysicsEngineeringRecommender Systems and TechniquesSentiment Analysis and Opinion MiningImage Retrieval and Classification Techniques