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Session Interest Model for CTR Prediction Based on Self-Attention Mechanism
[post]
2022
unpublished
Click-through rate prediction, which aims to predict the probability of the user clicking on an item, is critical to online advertising. How to capture the user evolving interests from the user behavior sequence is an important issue in CTR prediction. However, most existing models ignore the factor that the sequence is composed of sessions, and user behavior can be divided into different sessions according to the occurring time. The user behaviors are highly correlated in each session and are
doi:10.21203/rs.3.rs-1022005/v1
fatcat:3dguoe6yfbe5zlxtp7ot67yz5i