Schema matching is a central challenge for data integration systems. Automated tools are often uncertain about schema matchings they suggest, and this uncertainty is inherent since it arises from the inability of the schema to fully capture the semantics of the represented data. Human common sense can often help. Inspired by the popularity and the success of easily accessible crowdsourcing platforms, we explore the use of crowdsourcing to reduce the uncertainty of schema matching. Since it is typical to ask simple questions on crowdsourcing platforms, we assume that each question, namely Correspondence Correctness Question (CCQ), is to ask the crowd to decide whether a given correspondence should exist in the correct matching. We propose fr...
International audienceDiscovering correspondences between schema elements is a crucial task for data...
By incorporating human workers into the query execution process crowd-enabled databases facilitate i...
Many important data management and analytics tasks cannot be completely addressed by automated proce...
Schema matching is a central challenge for data integration sys-tems. Automated tools are often unce...
Schema matching is a central challenge for data integration systems. Due to the inherent uncertainty...
Schema matching is the process of establishing correspondences between the attributes of database sc...
Abstract. As the number of publicly-available datasets are likely to grow, the demand of establishin...
Schema matching is the process of establishing correspondences between the attributes of database sc...
Abstract. Schema and ontology matching is a process of establishing corre-spondences between schema ...
Schema matching is a critical problem for integrating heterogeneous information sources. Traditional...
Schema matching has been a researched topic for over 20 years. Therefore, many schema matching solut...
With the prevalence of databases on the Web, \emph{large scale} integration has become a pressing pr...
IEEE We propose a probabilistic approach to the problem of schema mapping. Our approach is declarati...
Schema matching is a critical problem for integrating heterogeneous information sources. Traditional...
This dissertation studies the schema matching problem that finds semantic correspondences (called ma...
International audienceDiscovering correspondences between schema elements is a crucial task for data...
By incorporating human workers into the query execution process crowd-enabled databases facilitate i...
Many important data management and analytics tasks cannot be completely addressed by automated proce...
Schema matching is a central challenge for data integration sys-tems. Automated tools are often unce...
Schema matching is a central challenge for data integration systems. Due to the inherent uncertainty...
Schema matching is the process of establishing correspondences between the attributes of database sc...
Abstract. As the number of publicly-available datasets are likely to grow, the demand of establishin...
Schema matching is the process of establishing correspondences between the attributes of database sc...
Abstract. Schema and ontology matching is a process of establishing corre-spondences between schema ...
Schema matching is a critical problem for integrating heterogeneous information sources. Traditional...
Schema matching has been a researched topic for over 20 years. Therefore, many schema matching solut...
With the prevalence of databases on the Web, \emph{large scale} integration has become a pressing pr...
IEEE We propose a probabilistic approach to the problem of schema mapping. Our approach is declarati...
Schema matching is a critical problem for integrating heterogeneous information sources. Traditional...
This dissertation studies the schema matching problem that finds semantic correspondences (called ma...
International audienceDiscovering correspondences between schema elements is a crucial task for data...
By incorporating human workers into the query execution process crowd-enabled databases facilitate i...
Many important data management and analytics tasks cannot be completely addressed by automated proce...