@schmidt2

Feedback-based annotation, selection and refinement of schema mappings for dataspaces

, , , , and . Proceedings of the 13th International Conference on Extending Database Technology, page 573--584. New York, NY, USA, ACM, (2010)
DOI: 10.1145/1739041.1739110

Abstract

The specification of schema mappings has proved to be time and resource consuming, and has been recognized as a critical bottleneck to the large scale deployment of data integration systems. In an attempt to address this issue, dataspaces have been proposed as a data management abstraction that aims to reduce the up-front cost required to setup a data integration system by gradually specifying schema mappings through interaction with end users in a pay-as-you-go fashion. As a step in this direction, we explore an approach for incrementally annotating schema mappings using feedback obtained from end users. In doing so, we do not expect users to examine mapping specifications; rather, they comment on results to queries evaluated using the mappings. Using annotations computed on the basis of user feedback, we present a method for selecting from the set of candidate mappings, those to be used for query evaluation considering user requirements in terms of precision and recall. In doing so, we cast mapping selection as an optimization problem. Mapping annotations may reveal that the quality of schema mappings is poor. We also show how feedback can be used to support the derivation of better quality mappings from existing mappings through refinement. An evolutionary algorithm is used to efficiently and effectively explore the large space of mappings that can be obtained through refinement. The results of evaluation exercises show the effectiveness of our solution for annotating, selecting and refining schema mappings.

Description

Feedback-based annotation, selection and refinement of schema mappings for dataspaces

Links and resources

Tags

community

  • @b.bruns
  • @schmidt2
  • @dblp
@schmidt2's tags highlighted