Matching schemas of heterogeneous relational databases
Schema matching is a basic problem in many database application domains, such as data integration. The problem of schema matching can be formulated as follows, "given two schemas, Si and Sj, find the most plausible correspondences between the elements of Si and S j, exploiting all available inf...
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Online Access: | http://psasir.upm.edu.my/id/eprint/47992/1/Matching%20schemas%20of%20heterogeneous%20relational%20databases.pdf http://psasir.upm.edu.my/id/eprint/47992/ |
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my.upm.eprints.479922016-08-03T04:27:57Z http://psasir.upm.edu.my/id/eprint/47992/ Matching schemas of heterogeneous relational databases Karasneh, Yaser Mohammad Ali Ibrahim, Hamidah Othman, Mohamed Yaakob, Razali Schema matching is a basic problem in many database application domains, such as data integration. The problem of schema matching can be formulated as follows, "given two schemas, Si and Sj, find the most plausible correspondences between the elements of Si and S j, exploiting all available information, such as the schemas, instance data, and auxiliary sources" [24]. Given the rapidly increasing number of data sources to integrate and due to database heterogeneities, manually identifying schema matches is a tedious, time consuming, error-prone, and therefore expensive process. As systems become able to handle more complex databases and applications, their schemas become large, further increasing the number of matches to be performed. Thus, automating this process, which attempts to achieve faster and less labor-intensive, has been one of the main tasks in data integration. However, it is not possible to determine fully automatically the different correspondences between schemas, primarily because of the differing and often not explicated or documented semantics of the schemas. Several solutions in solving the issues of schema matching have been proposed. Nevertheless, these solutions are still limited, as they do not explore most of the available information related to schemas and thus affect the result of integration. This paper presents an approach for matching schemas of heterogeneous relational databases that utilizes most of the information related to schemas, which indirectly explores the implicit semantics of the schemas, that further improves the results of the integration. IEEE 2009 Conference or Workshop Item PeerReviewed application/pdf en http://psasir.upm.edu.my/id/eprint/47992/1/Matching%20schemas%20of%20heterogeneous%20relational%20databases.pdf Karasneh, Yaser Mohammad Ali and Ibrahim, Hamidah and Othman, Mohamed and Yaakob, Razali (2009) Matching schemas of heterogeneous relational databases. In: Second International Conference on the Applications of Digital Information and Web Technologies (ICADIWT 2009), 4-6 Aug. 2009, London, United Kingdom. (pp. 1-7). 10.1109/ICADIWT.2009.5273926 |
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Schema matching is a basic problem in many database application domains, such as data integration. The problem of schema matching can be formulated as follows, "given two schemas, Si and Sj, find the most plausible correspondences between the elements of Si and S j, exploiting all available information, such as the schemas, instance data, and auxiliary sources" [24]. Given the rapidly increasing number of data sources to integrate and due to database heterogeneities, manually identifying schema matches is a tedious, time consuming, error-prone, and therefore expensive process. As systems become able to handle more complex databases and applications, their schemas become large, further increasing the number of matches to be performed. Thus, automating this process, which attempts to achieve faster and less labor-intensive, has been one of the main tasks in data integration. However, it is not possible to determine fully automatically the different correspondences between schemas, primarily because of the differing and often not explicated or documented semantics of the schemas. Several solutions in solving the issues of schema matching have been proposed. Nevertheless, these solutions are still limited, as they do not explore most of the available information related to schemas and thus affect the result of integration. This paper presents an approach for matching schemas of heterogeneous relational databases that utilizes most of the information related to schemas, which indirectly explores the implicit semantics of the schemas, that further improves the results of the integration. |
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Conference or Workshop Item |
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Karasneh, Yaser Mohammad Ali Ibrahim, Hamidah Othman, Mohamed Yaakob, Razali |
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Karasneh, Yaser Mohammad Ali Ibrahim, Hamidah Othman, Mohamed Yaakob, Razali Matching schemas of heterogeneous relational databases |
author_facet |
Karasneh, Yaser Mohammad Ali Ibrahim, Hamidah Othman, Mohamed Yaakob, Razali |
author_sort |
Karasneh, Yaser Mohammad Ali |
title |
Matching schemas of heterogeneous relational databases |
title_short |
Matching schemas of heterogeneous relational databases |
title_full |
Matching schemas of heterogeneous relational databases |
title_fullStr |
Matching schemas of heterogeneous relational databases |
title_full_unstemmed |
Matching schemas of heterogeneous relational databases |
title_sort |
matching schemas of heterogeneous relational databases |
publisher |
IEEE |
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2009 |
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http://psasir.upm.edu.my/id/eprint/47992/1/Matching%20schemas%20of%20heterogeneous%20relational%20databases.pdf http://psasir.upm.edu.my/id/eprint/47992/ |
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