Adding Knowledge Extracted by Association Rules into Similarity Queries

Authors

  • Mônica R. P. Ferreira ICMC - USP
  • Marcela X Ribeiro Universidade Federal de São Carlos (UFSCar)
  • Agma J. M. Traina ICMC-USP
  • Richard Chbeir Université de Bourgogne
  • Caetano Traina Jr. ICMC-USP

Keywords:

association rules, content-based retrieval, query rewriting, similarity queries, SQL extension, user expectation

Abstract

In this paper, we propose new techniques to improve the quality of similarity queries over image databases performing association rule mining over textual descriptions and automatically extracted features of the image content. Based on the knowledge mined, each query posed is rewritten in order to better meet the user expectations. We propose an extension of SQL aimed at exploring mining processes over complex data, generating association rules that extract semantic information from the textual description superimposed to the extracted features, thereafter using them to rewrite the queries. As a result, the system obtains results closer to the user expectation than it could using only the traditional, plain similarity query execution.

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Published

2010-09-09

Issue

Section

Regular Articles