Semantic IDs for Music Recommendation
Mei, M. Jeffrey, Henkel, Florian, Sandberg, Samuel E., Bembom, Oliver, Ehmann, Andreas F.
–arXiv.org Artificial Intelligence
Training recommender systems for next-item recommendation often requires unique embeddings to be learned for each item, which may take up most of the trainable parameters for a model. Shared embeddings, such as using content information, can reduce the number of distinct embeddings to be stored in memory. This allows for a more lightweight model; correspondingly, model complexity can be increased due to having fewer embeddings to store in memory. We show the benefit of using shared content-based features ('semantic IDs') in improving recommendation accuracy and diversity, while reducing model size, for two music recommendation datasets, including an online A/B test on a music streaming service.
arXiv.org Artificial Intelligence
Jul-28-2025
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