Artículos de revistas
Diversity in similarity joins
Fecha
2015Registro en:
Lecture Notes in Computer Science, Cham, v.9371, p.42-53, 2015
0302-9743
10.1007/978-3-319-25087-8_4
Autor
Santos, Lúcio Fernandes Dutra
Carvalho, Luiz Olmes
Oliveira, Willian Dener de
Traina, Agma Juci Machado
Traina Junior, Caetano
Institución
Resumen
With the increasing ability of current applications to produce and consume more complex data, such as images and geographic information, the similarity join has attracted considerable attention. However, this operator does not consider the relationship among the elements in the answer, generating results with many pairs similar among themselves, which does not add value to the final answer. Result diversification methods are intended to retrieve elements similar enough to satisfy the similarity conditions, but also considering the diversity among the elements in the answer, producing a more heterogeneous result with smaller cardinality, which improves the meaning of the answer. Still, diversity have been studied only when applied to unary operations. In this paper, we introduce the concept of diverse similarity joins: a similarity join operator that ensures a smaller, more diversified and useful answers. The experiments performed on real and synthetic datasets show that our proposal allows exploiting diversity in similarity joins without diminish their performance whereas providing elements that cover the same data space distribution of the non-diverse answers.