Use of permutation prefixes for efficient and scalable approximate similarity search

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We present the Permutation Prefix Index (this work is a revised and extended version of Esuli (2009b), presented at the 2009 LSDS-IR Workshop, held in Boston) (PP-Index), an index data structure that supports efficient approximate similarity search.The PP-Index belongs to the family of the permutation-based indexes, which are based on representing any indexed object with “its view of the surrounding world”, i.e., a list of the elements of a set of reference objects sorted by their distance order with respect to the indexed object.In its basic formulation, the PP-Index is strongly biased toward efficiency. We show how the effectiveness can easily reach optimal levels just by adopting two “boosting” strategies: multiple index search and multiple query search, which both have nice parallelization properties.We study both the efficiency and the effectiveness properties of the PP-Index, experimenting with collections of sizes up to one hundred million objects, represented in a very high-dimensional similarity space.

论文关键词:Approximate similarity search,Metric space,Scalability

论文评审过程:Received 11 February 2010, Revised 23 November 2010, Accepted 27 November 2010, Available online 8 January 2011.

论文官网地址:https://doi.org/10.1016/j.ipm.2010.11.011