A basic step in integration is the identification of linkage points, i.e., finding attributes that are shared (or related) between data sources, and that can be used to match records or entities across sources. This is usually performed using a match operator, that associates attributes of one database to another. However, the mas-sive growth in the amount and variety of unstructured and semi-structured data on the Web has created new challenges for this task. Such data sources often do not have a fixed pre-defined schema and contain large numbers of diverse attributes. Furthermore, the end goal is not schema alignment as these schemas may be too hetero-geneous (and dynamic) to meaningfully align. Rather, the goal is to align any overlappin...
Linked Data has emerged as a powerful way of interconnecting structured data on the Web. However, th...
Database schema integration aims at providing a uniform and consistent view called global schema, ov...
Data integration is a broad area encompassing techniques to merge data between data sources. Althoug...
Record linkage refers to the task of finding and linking records (in a single database or in a set o...
To enable information integration, schema matching is a critical step for discovering semantic corre...
This dissertation studies the schema matching problem that finds semantic correspondences (called ma...
Schema matching is a critical problem for integrating heterogeneous information sources. Traditional...
The Linked Data paradigm is a common standard initiated to complement the general architecture of th...
International audienceThe large number of linked datasets in the Web, and their diversity in terms o...
Existing techniques for schema matching are classified as either schema-based, instance-based, or a ...
In recent years, the Web has evolved from a global information space of linked documents to a space ...
Schema matching aims at identifying semantic correspondences between elements of two schemas, e.g., ...
Schema matching is considered as one of the essential phases of data integration in database systems...
Automating semantic matching of attributes for the purpose of information integration is challenging...
Abstract. The Web of Data is currently undergoing an unprecedented level of growth thanks to the Lin...
Linked Data has emerged as a powerful way of interconnecting structured data on the Web. However, th...
Database schema integration aims at providing a uniform and consistent view called global schema, ov...
Data integration is a broad area encompassing techniques to merge data between data sources. Althoug...
Record linkage refers to the task of finding and linking records (in a single database or in a set o...
To enable information integration, schema matching is a critical step for discovering semantic corre...
This dissertation studies the schema matching problem that finds semantic correspondences (called ma...
Schema matching is a critical problem for integrating heterogeneous information sources. Traditional...
The Linked Data paradigm is a common standard initiated to complement the general architecture of th...
International audienceThe large number of linked datasets in the Web, and their diversity in terms o...
Existing techniques for schema matching are classified as either schema-based, instance-based, or a ...
In recent years, the Web has evolved from a global information space of linked documents to a space ...
Schema matching aims at identifying semantic correspondences between elements of two schemas, e.g., ...
Schema matching is considered as one of the essential phases of data integration in database systems...
Automating semantic matching of attributes for the purpose of information integration is challenging...
Abstract. The Web of Data is currently undergoing an unprecedented level of growth thanks to the Lin...
Linked Data has emerged as a powerful way of interconnecting structured data on the Web. However, th...
Database schema integration aims at providing a uniform and consistent view called global schema, ov...
Data integration is a broad area encompassing techniques to merge data between data sources. Althoug...