Přehled o publikaci
2019
Metric Embedding into the Hamming Space with the n-Simplex Projection
VADICAMO, Lucia; Vladimír MÍČ; Falchi FABRIZIO and Pavel ZEZULABasic information
Original name
Metric Embedding into the Hamming Space with the n-Simplex Projection
Authors
VADICAMO, Lucia; Vladimír MÍČ; Falchi FABRIZIO and Pavel ZEZULA
Edition
Cham, Similarity Search and Applications: 12th International Conference, SISAP 2019, Newark, New Jersey, USA, October 2-4, 2019, Proceedings, p. 265-272, 8 pp. 2019
Publisher
Springer International Publishing
Other information
Language
English
Type of outcome
Proceedings paper
Country of publisher
Switzerland
Confidentiality degree
is not subject to a state or trade secret
Publication form
printed version "print"
Marked to be transferred to RIV
Yes
RIV identification code
RIV/00216224:14330/19:00110797
Organization
Fakulta informatiky – Repository – Repository
ISBN
978-3-030-32046-1
ISSN
EID Scopus
Keywords in English
Similarity search; Space transformation; Hamming Embedding; n-Simplex Projection; sketch
Links
EF16_019/0000822, research and development project.
Changed: 9/9/2020 08:47, RNDr. Daniel Jakubík
Abstract
In the original language
Transformations of data objects into the Hamming space are often exploited to speed-up the similarity search in metric spaces. Techniques applicable in generic metric spaces require expensive learning, e.g., selection of pivoting objects. However, when searching in common Euclidean space, the best performance is usually achieved by transformations specifically designed for this space. We propose a novel transformation technique that provides a good trade-off between the applicability and the quality of the space approximation. It uses the n-Simplex projection to transform metric objects into a low-dimensional Euclidean space, and then transform this space to the Hamming space. We compare our approach theoretically and experimentally with several techniques of the metric embedding into the Hamming space. We focus on the applicability, learning cost, and the quality of search space approximation.