In knowledge bases or information extraction results, differently expressed relations can be semantically similar (e.g., (X, wrote, Y) and (X, 's written work, Y)). Therefore, grouping semantically similar relations into clusters would facilitate and improve many applications, including knowledge base completion, information extraction, information retrieval, and more. This paper formulates relation clustering as a constrained tripartite graph clustering problem, presents an efficient clustering algorithm and exhibits the advantage of the constrained framework. We introduce several ways that provide side information via must-link and cannot-link constraints to improve the clustering results. Different from traditional semi-supervised l...
Many document collections are private and accessible only by selected people. Especially in busines...
Many text mining tasks, such as clustering, classification, retrieval, and named entity linking, ben...
The goal of Information Extraction is to automatically generate structured pieces of information fr...
International audienceMost research in Information Extraction concentrates on the extraction of rela...
Automatic recognition of semantic relations constitutes an important part of information extraction....
National audienceMost studies in unsupervised information extraction concentrate on the relation ext...
International audienceInformation Extraction has recently been extended to new areas by loosening th...
International audienceIn this paper, we present different combined cluster- ing methods and we evalu...
With the rapid development of online social media, online shop-ping sites and cyber-physical systems...
Data objects in a relational database are cross-linked with each other via multi-typed links. Links ...
We consider the problem of clustering nodes in a graph, where each node has also internal content (e...
Unsupervised Relation Extraction (URE) is the task of extracting relations of a priori unknown seman...
In many segmentation applications, data objects are often clustered based purely on attribute-level ...
We consider the problem of clustering el-ements that have both content and rela-tional information (...
We consider the problem of clustering elements that have both content and relational information (e....
Many document collections are private and accessible only by selected people. Especially in busines...
Many text mining tasks, such as clustering, classification, retrieval, and named entity linking, ben...
The goal of Information Extraction is to automatically generate structured pieces of information fr...
International audienceMost research in Information Extraction concentrates on the extraction of rela...
Automatic recognition of semantic relations constitutes an important part of information extraction....
National audienceMost studies in unsupervised information extraction concentrate on the relation ext...
International audienceInformation Extraction has recently been extended to new areas by loosening th...
International audienceIn this paper, we present different combined cluster- ing methods and we evalu...
With the rapid development of online social media, online shop-ping sites and cyber-physical systems...
Data objects in a relational database are cross-linked with each other via multi-typed links. Links ...
We consider the problem of clustering nodes in a graph, where each node has also internal content (e...
Unsupervised Relation Extraction (URE) is the task of extracting relations of a priori unknown seman...
In many segmentation applications, data objects are often clustered based purely on attribute-level ...
We consider the problem of clustering el-ements that have both content and rela-tional information (...
We consider the problem of clustering elements that have both content and relational information (e....
Many document collections are private and accessible only by selected people. Especially in busines...
Many text mining tasks, such as clustering, classification, retrieval, and named entity linking, ben...
The goal of Information Extraction is to automatically generate structured pieces of information fr...