Clustering the Sketch: Dynamic Compression for Embedding Tables

Part of Advances in Neural Information Processing Systems 36 (NeurIPS 2023) Main Conference Track

Bibtex Paper Supplemental

Authors

Henry Tsang, Thomas Ahle

Abstract

Embedding tables are used by machine learning systems to work with categorical features.In modern Recommendation Systems, these tables can be very large, necessitating the development of new methods for fitting them in memory, even during training.We suggest Clustered Compositional Embeddings (CCE) which combines clustering-based compression like quantization to codebooks with dynamic methods like The Hashing Trick and Compositional Embeddings [Shi et al., 2020].Experimentally CCE achieves the best of both worlds: The high compression rate of codebook-based quantization, but \emph{dynamically} like hashing-based methods, so it can be used during training.Theoretically, we prove that CCE is guaranteed to converge to the optimal codebook and give a tight bound for the number of iterations required.