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    3. SLIM (Sparsified Late Interaction Multi-Vector Retrieval)

    SLIM (Sparsified Late Interaction Multi-Vector Retrieval)

    Efficient multi-vector retrieval system using sparsified late interaction with inverted indexes. Achieves 40% less storage and 83% lower latency than ColBERT-v2 while maintaining competitive accuracy.

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    About this tool

    Overview

    SLIM (Sparsified Late Interaction for Multi-vector retrieval with inverted indexes) addresses efficiency challenges in multi-vector retrieval systems like ColBERT while maintaining competitive accuracy.

    Problem Statement

    ColBERT is the most established multi-vector retrieval method based on late interaction of contextualized token embeddings. However:

    • Efficient ColBERT implementations require complex engineering
    • Cannot take advantage of off-the-shelf search libraries
    • High storage and computational requirements

    SLIM Solution

    SLIM maps each contextualized token vector to a sparse, high-dimensional lexical space before performing late interaction between these sparse token embeddings.

    Architecture

    Two-Stage Retrieval

    1. Inverted index retrieval: Initial candidate retrieval using sparse representations
    2. Score refinement module: Approximates sparsified late interaction

    Library Compatibility

    Fully compatible with off-the-shelf lexical search libraries such as Lucene, enabling easier deployment and maintenance.

    Performance Results

    Experiments on MS MARCO Passages show:

    • Similar ranking accuracy compared to ColBERT-v2
    • 40% less storage required
    • 83% decrease in latency
    • Competitive accuracy on MS MARCO Passages and BEIR benchmarks
    • Much faster on CPUs compared to ColBERT

    Availability

    • Published at SIGIR 2023
    • Source code and data integrated into Pyserini IR toolkit
    • Available on arXiv (2302.06587)
    • GitHub: alexlimh/SLIM

    Comparison with ColBERT

    SLIM Advantages:

    • Lower storage requirements
    • Faster retrieval
    • Compatible with existing search infrastructure
    • Simpler deployment

    ColBERT Advantages:

    • Slightly higher accuracy in some scenarios
    • Established ecosystem

    Applications

    • Large-scale passage retrieval
    • Question answering systems
    • Document search
    • Any scenario requiring multi-vector retrieval with efficiency constraints
    Surveys

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    Information

    Websitearxiv.org
    PublishedMar 8, 2026

    Categories

    1 Item
    Research Papers & Surveys

    Tags

    3 Items
    #Retrieval#Research#Sparse

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