International audienceIntegration systems are typically evaluated using a few real-world scenarios (e.g., bibliographical or biological datasets) or using synthetic scenarios (e.g., based on star-schemas or other patterns for schemas and constraints). Reusing such evaluations is a cumbersome task because their focus is usually limited to showcasing a specific feature of an approach. This makes it difficult to compare integration solutions, understand their generality, and understand their performance for different application scenarios. Based on this observation, we demonstrate some of the requirements for developing integration benchmarks. We argue that the major abstractions used for integration problems have converged in the last decade ...
International audienceVisual data analysis is a key tool for helping people to make sense of and int...
The integration of heterogeneous data sources is one of the main challenges within the area of data ...
This paper reports our first set of results on managing uncertainty in data integration. We posit th...
Integration systems are typically evaluated using a few real-world scenarios (e.g., bibliographical ...
ABSTRACT Given the maturity of the data integration field it is surprising that rigorous empirical e...
The Internet has instigated a critical need for automated tools for integrating countless databases....
During the last decade many data integration systems characterized by a classical wrapper/mediator a...
Abstract. To integrate information, data in different formats, from different, potentially overlappi...
The rapid growth of distributed data has fueled significant interest in building data integration sy...
International audienceData integration systems off er uniform access to a set of autonomous and hete...
Data integration provides a unified and abstract view over a set of existing data sources. The typic...
Data integration is a highly important prerequisite for most enterprise data analyses. While hard in...
On-demand integration of multiple data sources is a critical requirement in many Big Data settings. ...
Ensuring the quality of integrated data is undoubtedly one of the main problems of integrated data s...
Abstract — In this article, we address quality in the schema integration process. More specifically,...
International audienceVisual data analysis is a key tool for helping people to make sense of and int...
The integration of heterogeneous data sources is one of the main challenges within the area of data ...
This paper reports our first set of results on managing uncertainty in data integration. We posit th...
Integration systems are typically evaluated using a few real-world scenarios (e.g., bibliographical ...
ABSTRACT Given the maturity of the data integration field it is surprising that rigorous empirical e...
The Internet has instigated a critical need for automated tools for integrating countless databases....
During the last decade many data integration systems characterized by a classical wrapper/mediator a...
Abstract. To integrate information, data in different formats, from different, potentially overlappi...
The rapid growth of distributed data has fueled significant interest in building data integration sy...
International audienceData integration systems off er uniform access to a set of autonomous and hete...
Data integration provides a unified and abstract view over a set of existing data sources. The typic...
Data integration is a highly important prerequisite for most enterprise data analyses. While hard in...
On-demand integration of multiple data sources is a critical requirement in many Big Data settings. ...
Ensuring the quality of integrated data is undoubtedly one of the main problems of integrated data s...
Abstract — In this article, we address quality in the schema integration process. More specifically,...
International audienceVisual data analysis is a key tool for helping people to make sense of and int...
The integration of heterogeneous data sources is one of the main challenges within the area of data ...
This paper reports our first set of results on managing uncertainty in data integration. We posit th...