Task-adaptive Neural Process for User Cold-Start Recommendation
Xixun Lin, Jia Wu, Chuan Zhou, Shirui Pan, Yanan Cao, Bin Wang
Abstract
User cold-start recommendation is a long-standing challenge for recommender systems due to the fact that only a few interactions of cold-start users can be exploited. Recent studies seek to address this challenge from the perspective of meta learning, and most of them follow a manner of parameter initialization, where the model parameters can be learned by a few steps of gradient updates. While these gradient-based meta-learning models achieve promising performances to some extent, a fundamental problem of them is how to adapt the global knowledge learned from previous tasks for the recommendations of cold-start users more effectively.
Topics & Concepts
Cold start (automotive)InitializationComputer scienceTask (project management)Process (computing)Perspective (graphical)Recommender systemMeta learning (computer science)Artificial intelligenceMachine learningHuman–computer interactionEngineeringAerospace engineeringSystems engineeringOperating systemProgramming languageRecommender Systems and TechniquesAdvanced Bandit Algorithms ResearchTopic Modeling