TY - CONF
T1 - Query approximation in the case of incompletely aligned datasets
AU - Torre, Ana I.
AU - Bermudez, Jesus
AU - Illarramendi, Arantza
N1 - Publisher Copyright:
© 2015 Sistedes. All rights reserved.
PY - 2015
Y1 - 2015
N2 - Clouds of Linked Open Data about the same domain promote the formulation of a query over a source dataset and then try to process the same query over different target datasets, one after another, in order to obtain a broader set of answers. However, heterogeneity of vocabularies used in the datasets and the scarce number of alignments among those datasets makes that querying task extremely difficult. This paper presents a proposal that allows on demand transformations of queries by using a set of transformation rules that are able to rewrite a query formulated over a source dataset into another query adequate for a target dataset, which approximates the original one. The approach relieves users from knowing the vocabulary used in the targeted datasets and even more it considers situations where alignments do not exist or they are not suitable for the formulated query. Therefore, in order to favor the possibility of getting answers, sometimes there is no guarantee of obtaining a semantically equivalent translation. Experiments with benchmark queries validate the feasibility of the proposal.
AB - Clouds of Linked Open Data about the same domain promote the formulation of a query over a source dataset and then try to process the same query over different target datasets, one after another, in order to obtain a broader set of answers. However, heterogeneity of vocabularies used in the datasets and the scarce number of alignments among those datasets makes that querying task extremely difficult. This paper presents a proposal that allows on demand transformations of queries by using a set of transformation rules that are able to rewrite a query formulated over a source dataset into another query adequate for a target dataset, which approximates the original one. The approach relieves users from knowing the vocabulary used in the targeted datasets and even more it considers situations where alignments do not exist or they are not suitable for the formulated query. Therefore, in order to favor the possibility of getting answers, sometimes there is no guarantee of obtaining a semantically equivalent translation. Experiments with benchmark queries validate the feasibility of the proposal.
UR - http://www.scopus.com/inward/record.url?scp=85064079241&partnerID=8YFLogxK
M3 - Paper
AN - SCOPUS:85064079241
T2 - 20th Jornadas de Ingenier�a del Software y Bases de Datos, JISBD 2015 - 20th Conference on Software Engineering and Databases, JISBD 2015
Y2 - 15 September 2015 through 17 September 2015
ER -