Novel research in the field of Linked Data focuses on the problem of entity summarization. This field addresses the problem of ranking features according to their importance for the task of identifying a particular entity. Next to a more human friendly presentation, these summarizations can play a central role for semantic search engines and semantic rec-ommender systems. In current approaches, it has been tried to apply entity summarization based on patterns that are inherent to the regarded data. The proposed approach of this paper focuses on the movie domain. It utilizes usage data in order to support measuring the similarity between movie entities. Using this similarity it is possible to determine the k-nearest neighbors of an en-tity. ...
The intensive construction of domain-specific knowledge bases (DSKB) has posed an urgent demand for ...
Nowadays, data integration must often manage noisy data, also containing attribute values written in...
International audienceThe extraction and the disambiguation of knowledge guided by textual resources...
This article presents a novel approach to estimate semantic entity sim- ilarity using entity feature...
Representing world knowledge in a machine processable format is important as entities and their desc...
Several approaches have been used in the last years to compute similarity between entities. In this ...
The discovery of useful data for a given problem is of primary importance since data scientists usua...
Entity linking connects the Web of documents with knowl-edge bases. It is the task of linking an ent...
This paper describes the use of connections between named entities for summarization of broadcast ne...
We investigate the problem of entity ranking towards descriptive queries, that aims to match entitie...
This paper describes the effect of introducing embeddingbased features in a learning to rank approac...
On the Web, the amount of structured and Linked Data about entities is constantly growing. Descripti...
International audienceCollective entity linking is a core natural language processing task, which co...
The intensive construction of domain-specific knowledge bases (DSKB) has posed an urgent demand for ...
Nowadays, data integration must often manage noisy data, also containing attribute values written in...
International audienceThe extraction and the disambiguation of knowledge guided by textual resources...
This article presents a novel approach to estimate semantic entity sim- ilarity using entity feature...
Representing world knowledge in a machine processable format is important as entities and their desc...
Several approaches have been used in the last years to compute similarity between entities. In this ...
The discovery of useful data for a given problem is of primary importance since data scientists usua...
Entity linking connects the Web of documents with knowl-edge bases. It is the task of linking an ent...
This paper describes the use of connections between named entities for summarization of broadcast ne...
We investigate the problem of entity ranking towards descriptive queries, that aims to match entitie...
This paper describes the effect of introducing embeddingbased features in a learning to rank approac...
On the Web, the amount of structured and Linked Data about entities is constantly growing. Descripti...
International audienceCollective entity linking is a core natural language processing task, which co...
The intensive construction of domain-specific knowledge bases (DSKB) has posed an urgent demand for ...
Nowadays, data integration must often manage noisy data, also containing attribute values written in...
International audienceThe extraction and the disambiguation of knowledge guided by textual resources...