Learned Ranking Function: From Short-term Behavior Predictions to Long-term User Satisfaction
Machine Learning
2024-08-14 v1 Artificial Intelligence
Information Retrieval
Abstract
We present the Learned Ranking Function (LRF), a system that takes short-term user-item behavior predictions as input and outputs a slate of recommendations that directly optimizes for long-term user satisfaction. Most previous work is based on optimizing the hyperparameters of a heuristic function. We propose to model the problem directly as a slate optimization problem with the objective of maximizing long-term user satisfaction. We also develop a novel constraint optimization algorithm that stabilizes objective trade-offs for multi-objective optimization. We evaluate our approach with live experiments and describe its deployment on YouTube.
Cite
@article{arxiv.2408.06512,
title = {Learned Ranking Function: From Short-term Behavior Predictions to Long-term User Satisfaction},
author = {Yi Wu and Daryl Chang and Jennifer She and Zhe Zhao and Li Wei and Lukasz Heldt},
journal= {arXiv preprint arXiv:2408.06512},
year = {2024}
}
Comments
RecSys 24