Linking entities with knowledge base (entity linking) is a key issue in bridging the textual data with the structural knowledge base. Due to the name variation problem and the name ambiguity problem, the entity linking decisions are critically depending on the heterogenous knowledge of entities. In this paper, we propose a generative probabilistic model, called entity-mention model, which can leverage heterogenous entity knowledge (including popularity knowledge, name knowledge and context knowledge) for the entity linking task. In our model, each name mention to be linked is modeled as a sample generated through a three-step generative story, and the entity knowledge is encoded in the distribution of entities in document P(e), the distribu...
Continuously discovering novel entities in news and Web data is important for Knowledge Base (KB) ma...
International audienceCollective entity linking is a core natural language processing task, which co...
Hakimov S, ter Horst H, Jebbara S, Hartung M, Cimiano P. Research Data - Combining Textual and Graph...
Conference paperThe recognition of entities in text is the basis for a series of applications. Synon...
Entity linking, a very popular research topic nowadays, involves identi-fying mentions of ‘real worl...
Entity Linking (EL) is the task of linking name mentions in Web text with their referent entities in...
With recent advances in the areas of knowledge engineering and information extraction, the task of l...
We present a statistical model for canonicalizing named entity mentions into a table whose rows repr...
Entity linking (also called entity disambiguation) aims to map the mentions in a given document to t...
Many real-world applications increasingly involve both structured data and text. A given real-world ...
Existing state of the art neural entity linking models employ attention-based bag-of-words context m...
International audienceEntity linking is a core task in textual document processing, which consists i...
Entity linking connects the Web of documents with knowl-edge bases. It is the task of linking an ent...
International audienceThe correct identification of the link between an entity mention in a text and...
We propose a simple and practical method of named entity linking (NEL), and explore its features and...
Continuously discovering novel entities in news and Web data is important for Knowledge Base (KB) ma...
International audienceCollective entity linking is a core natural language processing task, which co...
Hakimov S, ter Horst H, Jebbara S, Hartung M, Cimiano P. Research Data - Combining Textual and Graph...
Conference paperThe recognition of entities in text is the basis for a series of applications. Synon...
Entity linking, a very popular research topic nowadays, involves identi-fying mentions of ‘real worl...
Entity Linking (EL) is the task of linking name mentions in Web text with their referent entities in...
With recent advances in the areas of knowledge engineering and information extraction, the task of l...
We present a statistical model for canonicalizing named entity mentions into a table whose rows repr...
Entity linking (also called entity disambiguation) aims to map the mentions in a given document to t...
Many real-world applications increasingly involve both structured data and text. A given real-world ...
Existing state of the art neural entity linking models employ attention-based bag-of-words context m...
International audienceEntity linking is a core task in textual document processing, which consists i...
Entity linking connects the Web of documents with knowl-edge bases. It is the task of linking an ent...
International audienceThe correct identification of the link between an entity mention in a text and...
We propose a simple and practical method of named entity linking (NEL), and explore its features and...
Continuously discovering novel entities in news and Web data is important for Knowledge Base (KB) ma...
International audienceCollective entity linking is a core natural language processing task, which co...
Hakimov S, ter Horst H, Jebbara S, Hartung M, Cimiano P. Research Data - Combining Textual and Graph...