2023
DOI: 10.48550/arxiv.2302.09178
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Improving Training Stability for Multitask Ranking Models in Recommender Systems

Abstract: Recommender systems play an important role in many content platforms. While most recommendation research is dedicated to designing better models to improve user experience, we found that research on stabilizing the training for such models is severely under-explored. As recommendation models become larger and more sophisticated, they are more susceptible to training instability issues, i.e., loss divergence, which can make the model unusable, waste significant resources and block model developments. In this pa… Show more

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