Intelligent integration of information continues to challenge database research for over 35 years. While data integration processes of all kinds are now reasonably well understood and widely used in practice, the growth and heterogeneity of data requires much higher degrees of automation to limit the need for human specialist work. This requires deeper insights in data-centric approaches of Enterprise Information Integration which focus on the semantics of information integration. Recent formalizations and algorithms enable both significant improvement in schema integration, and in its automated transformation to efficient data-level integration, in a wide variety of architectural settings such as data warehouses or peer-to-peer databases. In addition to giving a short overview of developments in this field for the past 20 years, this paper focuses particularly on the challenges posed by heterogeneity in data models.
%0 Journal Article
%1 JarkeJeusfeldQuix14jiis
%A Jarke, Matthias
%A Jeusfeld, Manfred
%A Quix, Christoph
%D 2014
%J Journal of Intelligent Information Systems
%K v1500 springer paper ai semantic data database management processing ontology enterprise information format
%N 3
%P 437-462
%R 10.1007/s10844-014-0340-5
%T Data-centric Intelligent Information Integration---From Concepts to Automation
%V 43
%X Intelligent integration of information continues to challenge database research for over 35 years. While data integration processes of all kinds are now reasonably well understood and widely used in practice, the growth and heterogeneity of data requires much higher degrees of automation to limit the need for human specialist work. This requires deeper insights in data-centric approaches of Enterprise Information Integration which focus on the semantics of information integration. Recent formalizations and algorithms enable both significant improvement in schema integration, and in its automated transformation to efficient data-level integration, in a wide variety of architectural settings such as data warehouses or peer-to-peer databases. In addition to giving a short overview of developments in this field for the past 20 years, this paper focuses particularly on the challenges posed by heterogeneity in data models.
@article{JarkeJeusfeldQuix14jiis,
abstract = {Intelligent integration of information continues to challenge database research for over 35 years. While data integration processes of all kinds are now reasonably well understood and widely used in practice, the growth and heterogeneity of data requires much higher degrees of automation to limit the need for human specialist work. This requires deeper insights in data-centric approaches of Enterprise Information Integration which focus on the semantics of information integration. Recent formalizations and algorithms enable both significant improvement in schema integration, and in its automated transformation to efficient data-level integration, in a wide variety of architectural settings such as data warehouses or peer-to-peer databases. In addition to giving a short overview of developments in this field for the past 20 years, this paper focuses particularly on the challenges posed by heterogeneity in data models.},
added-at = {2014-12-13T22:26:09.000+0100},
author = {Jarke, Matthias and Jeusfeld, Manfred and Quix, Christoph},
biburl = {https://www.bibsonomy.org/bibtex/263a608dfea54e18a12969572d68fc950/flint63},
doi = {10.1007/s10844-014-0340-5},
file = {SpringerLink:2014/JarkeJeusfeldQuix14jiis.pdf:PDF},
groups = {public},
interhash = {8dc58ec70f3f1dcf36a9aac315d136ed},
intrahash = {63a608dfea54e18a12969572d68fc950},
issn = {0925-9902},
journal = {Journal of Intelligent Information Systems},
keywords = {v1500 springer paper ai semantic data database management processing ontology enterprise information format},
month = {#dec#},
number = 3,
pages = {437-462},
timestamp = {2018-04-16T11:50:09.000+0200},
title = {Data-centric Intelligent Information Integration---From Concepts to Automation},
username = {flint63},
volume = 43,
year = 2014
}