Industrial Recommender System
Industrial recommender systems aim to provide personalized recommendations at scale, optimizing user engagement and business metrics like click-through rates and conversions. Current research emphasizes improving model robustness and efficiency through techniques like self-supervised multi-task learning, addressing biases (e.g., popularity bias), and incorporating multimodal data and large language models to enhance representation learning and knowledge transfer across domains. These advancements are crucial for enhancing the performance and scalability of real-world recommendation systems across diverse platforms, impacting user experience and business outcomes.
Papers
October 8, 2024
September 29, 2024
September 23, 2024
September 17, 2024
September 7, 2024
August 31, 2024
July 29, 2024
July 28, 2024
July 2, 2024
June 10, 2024
June 6, 2024
May 27, 2024
May 3, 2024
March 15, 2024
February 21, 2024
December 15, 2023
October 7, 2023
July 21, 2023
July 3, 2023