Efficient Multivector Retrieval with Token-Aware Clustering and Hierarchical Indexing
This work addresses the computational and memory bottlenecks of multivector retrieval for practitioners needing efficient deployment of high-quality retrieval models.
TACHIOM introduces a token-aware clustering and hierarchical indexing method for multivector retrieval that achieves up to 247x faster clustering and 9.8x retrieval speedup over state-of-the-art systems while maintaining comparable effectiveness on MS-MARCOv1 and LoTTE.
Multivector retrieval models achieve state-of-the-art effectiveness through fine-grained token-level representations, but their deployment incurs substantial computational and memory costs. Current solutions, based on the well-known k-means clustering algorithm, group similar vectors together to enable both effective compression and efficient retrieval. However, standard k-means scales poorly with the number of clusters and dataset size, and favours frequent tokens during training while underrepresenting rare, discriminative ones. In this work, we introduce TACHIOM, a multivector retrieval system that exploits token-level structure to significantly accelerate both clustering and retrieval. By accounting for tokens' distribution during centroid allocation, TACHIOM easily scales to millions of centroids, enabling highly accurate document scoring using only centroids, avoiding expensive token-level computation. TACHIOM combines a graph-based index over centroids with an optimized Product Quantization layout for efficient final scoring. Experiments on MS-MARCOv1 and LoTTE show that TACHIOM achieves up to $247\times$ faster clustering than k-means and up to $9.8\times$ retrieval speedup over state-of-the-art systems while maintaining comparable or superior effectiveness.