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    3. QALSH — Query-Aware Locality-Sensitive Hashing for ANNS

    QALSH — Query-Aware Locality-Sensitive Hashing for ANNS

    VLDB 2015 paper introducing QALSH, a query-aware locality-sensitive hashing scheme that improves retrieval accuracy by dynamically adjusting hash functions based on query characteristics.

    Overview

    QALSH introduces query-aware adaptation in locality-sensitive hashing for improved approximate nearest neighbor search accuracy.

    Key Contributions

    • Query-aware hash function adjustment
    • Improved retrieval accuracy over static LSH
    • Efficient probing strategy
    • Published in VLDB 2015

    Publication

    • Venue: VLDB 2015
    • Authors: Huang et al.
    • Abbreviation: QALSH
    Surveys

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    Information

    Websitewww.vldb.org
    PublishedApr 4, 2026

    Categories

    1 Item
    Research Papers & Surveys

    Tags

    3 Items
    #hash-based#locality-sensitive#query-aware

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    ICDE 2023 and TKDE 2023 papers introducing DB-LSH, a locality-sensitive hashing approach with query-based dynamic bucketing for efficient approximate nearest neighbor search.

    Locality-Sensitive Indexing for Graph-Based ANNS

    SIGIR 2025 paper proposing a locality-sensitive indexing approach for graph-based approximate nearest neighbor search, combining LSH principles with graph structure for improved search accuracy.

    MP-RW-LSH — Multi-probe LSH for A1-Norm Nearest Neighbor Search

    VLDB 2021 paper introducing MP-RW-LSH, an efficient multi-probe locality-sensitive hashing solution for A1-norm (Manhattan distance) approximate nearest neighbor search.

    PM-LSH — A Fast and Accurate In-memory Framework for High-Dimensional ANNS

    VLDB 2022 paper introducing PM-LSH, an in-memory locality-sensitive hashing framework for high-dimensional approximate nearest neighbor and closest pair search with strong accuracy guarantees.

    LSH-APG — Towards Efficient Index Construction and ANNS in High-Dimensional Spaces

    VLDB 2023 paper proposing LSH-APG, a method combining locality-sensitive hashing with adaptive proximity graphs for efficient index construction and approximate nearest neighbor search in high-dimensional spaces.

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