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Article
STIRDAT: A system integrating relational databases and a theorem prover.
Faculty Publications
  • Lila Rao
  • Han Reichgelt
SelectedWorks Author Profiles:

Han Reichgelt

Document Type
Article
Publication Date
2000
Date Issued
January 2000
Date Available
July 2014
Disciplines
Abstract
There has been a growing awareness of the need to share data and services among autonomous heterogeneous information sources. For obvious reasons, these sources are storing information in ways that meet their own needs and hence in different formats. However, for a combination of information from heterogeneous sources to be truly useful, a user needs to be able to use the shared information without having to learn the particular data format or the locations of the relevant data. This idea can be taken a step further as the importance of combining techniques from various areas in computer science becomes more obvious. There are a number of benefits that can be derived from combining, for example, some of the features of Artificial Intelligence systems, such as logical inference, with those of traditional database systems. This paper describes STIRDAT, a system tightly and transparently integrating data in a number of relational databases stored at different sites with a theorem prover. It provides a clear illustration of the benefits to be gained from a system combining techniques that have proven independently useful in different areas of Computer Science.
Comments
Citation only. Full-text article is available through licensed access provided by the publisher. Published in Data & Knowledge Engineering, 34, 1-20. doi: 10.1016/S0169-023X(00)00005-7. Members of the USF System may access the full-text of the article through the authenticated link provided.
Language
en_US
Publisher
Elsevier
Creative Commons License
Creative Commons Attribution-Noncommercial-No Derivative Works 4.0
Citation Information
Rao, L. & Reichgelt, H. (2000). STIRDAT: A system integrating relational databases and a theorem prover. Data & Knowledge Engineering, 34, 1-20. doi: 10.1016/S0169-023X(00)00005-7