2016
PPP-Codes for Large-Scale Similarity Searching
NOVÁK, David a Pavel ZEZULAZákladní údaje
Originální název
PPP-Codes for Large-Scale Similarity Searching
Autoři
NOVÁK, David (203 Česká republika, garant, domácí) a Pavel ZEZULA (203 Česká republika, domácí)
Vydání
Berlin Heidelberg, Transactions on Large-Scale Data- and Knowledge-Centered Systems XXIV, od s. 61-87, 27 s. 2016
Nakladatel
Springer
Další údaje
Jazyk
angličtina
Typ výsledku
Stať ve sborníku
Obor
10201 Computer sciences, information science, bioinformatics
Stát vydavatele
Německo
Utajení
není předmětem státního či obchodního tajemství
Forma vydání
tištěná verze "print"
Odkazy
Impakt faktor
Impact factor: 0.402 v roce 2005
Kód RIV
RIV/00216224:14330/16:00087959
Organizační jednotka
Fakulta informatiky
ISBN
978-3-662-49213-0
ISSN
UT WoS
000452460000002
Klíčová slova anglicky
similarity search; pivot permutations; approximate search; kNN search
Štítky
Příznaky
Mezinárodní význam, Recenzováno
Změněno: 14. 5. 2020 15:34, RNDr. Pavel Šmerk, Ph.D.
Anotace
V originále
Many current applications need to organize data with respect to mutual similarity between data objects. A typical general strategy to retrieve objects similar to a given sample is to access and then refine a candidate set of objects. We propose an indexing and search technique that can significantly reduce the candidate set size by combination of several space partitionings. Specifically, we propose a mapping of objects from a generic metric space onto main memory codes using several pivot spaces; our search algorithm first ranks objects within each pivot space and then aggregates these rankings producing a candidate set reduced by two orders of magnitude while keeping the same answer quality. Our approach is designed to well exploit contemporary HW: (1) larger main memories allow us to use rich and fast index, (2) multi-core CPUs well suit our parallel search algorithm, and (3) SSD disks without mechanical seeks enable efficient selective retrieval of candidate objects. The gain of the significant candidate set reduction is paid by the overhead of the candidate ranking algorithm and thus our approach is more advantageous for datasets with expensive candidate set refinement, i.e. large data objects or expensive similarity function. On real-life datasets, the search time speedup achieved by our approach is by factor of two to five.
Návaznosti
GBP103/12/G084, projekt VaV |
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