An efficient algorithm for approximated self-similarity joins in metric spaces

Abstract

Similarity join is a key operation in metric databases. It retrieves all pairs of elements that are similar. Solving such a problem usually requires comparing every pair of objects of the datasets, even when indexing and ad hoc algorithms are used. We propose a simple and efficient algorithm for the computation of the approximated k nearest neighbor self-similarity join. This algorithm computes Θ(n3∕2) distances and it is empirically shown that it reaches an empirical precision of 46% in real-world datasets. We provide a comparison to other common techniques such as Quickjoin and Locality-Sensitive Hashing and argue that our proposal has a better execution time and average precision.

Más información

Título según WOS: An efficient algorithm for approximated self-similarity joins in metric spaces
Título según SCOPUS: An efficient algorithm for approximated self-similarity joins in metric spaces
Título de la Revista: Information Systems
Volumen: 91
Editorial: Elsevier Ltd.
Fecha de publicación: 2020
Idioma: English
DOI:

10.1016/j.is.2020.101510

Notas: ISI, SCOPUS