A framework for quality evaluation in data integration systems

J. Akoka, Laure Berti-Equille, O. Boucelma, M. Bouzeghoub, I. Comyn-Wattiau, M. Cosquer, V. Goasdoué-Thion, Z. Kedad, S. Nugier, V. Peralta, S. Sisaid-Cherfi

Research output: Chapter in Book/Report/Conference proceedingConference contribution

30 Citations (Scopus)

Abstract

Ensuring and maximizing the quality and integrity of information is a crucial process for today enterprise information systems (EIS). It requires a clear understanding of the interdependencies between the dimensions characterizing quality of data (QoD), quality of conceptual data model (QoM) of the database, keystone of the EIS, and quality of data management and integration processes (QoP). The improvement of one quality dimension (such as data accuracy or model expressiveness) may have negative consequences on other quality dimensions (e.g., freshness or completeness of data). In this paper we briefly present a framework, called QUADRIS, relevant for adopting a quality improvement strategy on one or many dimensions of QoD or QoM with considering the collateral effects on the other interdependent quality dimensions. We also present the scenarios of our ongoing validations on a CRM EIS.

Original languageEnglish
Title of host publicationICEIS 2007 - 9th International Conference on Enterprise Information Systems, Proceedings
Pages170-175
Number of pages6
VolumeISAS
Publication statusPublished - 1 Dec 2007
Externally publishedYes
Event9th International Conference on Enterprise Information Systems, ICEIS 2007 - Funchal, Madeira, Portugal
Duration: 12 Jun 200716 Jun 2007

Other

Other9th International Conference on Enterprise Information Systems, ICEIS 2007
CountryPortugal
CityFunchal, Madeira
Period12/6/0716/6/07

Fingerprint

Data integration
Information systems
Industry
Information management
Data structures

Keywords

  • Data integration systems
  • Data quality
  • Quality meta-model

ASJC Scopus subject areas

  • Information Systems

Cite this

Akoka, J., Berti-Equille, L., Boucelma, O., Bouzeghoub, M., Comyn-Wattiau, I., Cosquer, M., ... Sisaid-Cherfi, S. (2007). A framework for quality evaluation in data integration systems. In ICEIS 2007 - 9th International Conference on Enterprise Information Systems, Proceedings (Vol. ISAS, pp. 170-175)

A framework for quality evaluation in data integration systems. / Akoka, J.; Berti-Equille, Laure; Boucelma, O.; Bouzeghoub, M.; Comyn-Wattiau, I.; Cosquer, M.; Goasdoué-Thion, V.; Kedad, Z.; Nugier, S.; Peralta, V.; Sisaid-Cherfi, S.

ICEIS 2007 - 9th International Conference on Enterprise Information Systems, Proceedings. Vol. ISAS 2007. p. 170-175.

Research output: Chapter in Book/Report/Conference proceedingConference contribution

Akoka, J, Berti-Equille, L, Boucelma, O, Bouzeghoub, M, Comyn-Wattiau, I, Cosquer, M, Goasdoué-Thion, V, Kedad, Z, Nugier, S, Peralta, V & Sisaid-Cherfi, S 2007, A framework for quality evaluation in data integration systems. in ICEIS 2007 - 9th International Conference on Enterprise Information Systems, Proceedings. vol. ISAS, pp. 170-175, 9th International Conference on Enterprise Information Systems, ICEIS 2007, Funchal, Madeira, Portugal, 12/6/07.
Akoka J, Berti-Equille L, Boucelma O, Bouzeghoub M, Comyn-Wattiau I, Cosquer M et al. A framework for quality evaluation in data integration systems. In ICEIS 2007 - 9th International Conference on Enterprise Information Systems, Proceedings. Vol. ISAS. 2007. p. 170-175
Akoka, J. ; Berti-Equille, Laure ; Boucelma, O. ; Bouzeghoub, M. ; Comyn-Wattiau, I. ; Cosquer, M. ; Goasdoué-Thion, V. ; Kedad, Z. ; Nugier, S. ; Peralta, V. ; Sisaid-Cherfi, S. / A framework for quality evaluation in data integration systems. ICEIS 2007 - 9th International Conference on Enterprise Information Systems, Proceedings. Vol. ISAS 2007. pp. 170-175
@inproceedings{5b76e32a99b4467e9c1fd7f52fa513ff,
title = "A framework for quality evaluation in data integration systems",
abstract = "Ensuring and maximizing the quality and integrity of information is a crucial process for today enterprise information systems (EIS). It requires a clear understanding of the interdependencies between the dimensions characterizing quality of data (QoD), quality of conceptual data model (QoM) of the database, keystone of the EIS, and quality of data management and integration processes (QoP). The improvement of one quality dimension (such as data accuracy or model expressiveness) may have negative consequences on other quality dimensions (e.g., freshness or completeness of data). In this paper we briefly present a framework, called QUADRIS, relevant for adopting a quality improvement strategy on one or many dimensions of QoD or QoM with considering the collateral effects on the other interdependent quality dimensions. We also present the scenarios of our ongoing validations on a CRM EIS.",
keywords = "Data integration systems, Data quality, Quality meta-model",
author = "J. Akoka and Laure Berti-Equille and O. Boucelma and M. Bouzeghoub and I. Comyn-Wattiau and M. Cosquer and V. Goasdou{\'e}-Thion and Z. Kedad and S. Nugier and V. Peralta and S. Sisaid-Cherfi",
year = "2007",
month = "12",
day = "1",
language = "English",
volume = "ISAS",
pages = "170--175",
booktitle = "ICEIS 2007 - 9th International Conference on Enterprise Information Systems, Proceedings",

}

TY - GEN

T1 - A framework for quality evaluation in data integration systems

AU - Akoka, J.

AU - Berti-Equille, Laure

AU - Boucelma, O.

AU - Bouzeghoub, M.

AU - Comyn-Wattiau, I.

AU - Cosquer, M.

AU - Goasdoué-Thion, V.

AU - Kedad, Z.

AU - Nugier, S.

AU - Peralta, V.

AU - Sisaid-Cherfi, S.

PY - 2007/12/1

Y1 - 2007/12/1

N2 - Ensuring and maximizing the quality and integrity of information is a crucial process for today enterprise information systems (EIS). It requires a clear understanding of the interdependencies between the dimensions characterizing quality of data (QoD), quality of conceptual data model (QoM) of the database, keystone of the EIS, and quality of data management and integration processes (QoP). The improvement of one quality dimension (such as data accuracy or model expressiveness) may have negative consequences on other quality dimensions (e.g., freshness or completeness of data). In this paper we briefly present a framework, called QUADRIS, relevant for adopting a quality improvement strategy on one or many dimensions of QoD or QoM with considering the collateral effects on the other interdependent quality dimensions. We also present the scenarios of our ongoing validations on a CRM EIS.

AB - Ensuring and maximizing the quality and integrity of information is a crucial process for today enterprise information systems (EIS). It requires a clear understanding of the interdependencies between the dimensions characterizing quality of data (QoD), quality of conceptual data model (QoM) of the database, keystone of the EIS, and quality of data management and integration processes (QoP). The improvement of one quality dimension (such as data accuracy or model expressiveness) may have negative consequences on other quality dimensions (e.g., freshness or completeness of data). In this paper we briefly present a framework, called QUADRIS, relevant for adopting a quality improvement strategy on one or many dimensions of QoD or QoM with considering the collateral effects on the other interdependent quality dimensions. We also present the scenarios of our ongoing validations on a CRM EIS.

KW - Data integration systems

KW - Data quality

KW - Quality meta-model

UR - http://www.scopus.com/inward/record.url?scp=70349565764&partnerID=8YFLogxK

UR - http://www.scopus.com/inward/citedby.url?scp=70349565764&partnerID=8YFLogxK

M3 - Conference contribution

VL - ISAS

SP - 170

EP - 175

BT - ICEIS 2007 - 9th International Conference on Enterprise Information Systems, Proceedings

ER -