Entity disambiguation (ED) aims to link textual mentions in a document to the correct named entities in a knowledge base (KB). Although global ED model usually outperforms local model by collectively linking mentions based on the topical coherence assumption, it may still incur incorrect entity assignment when a document contains multiple topics. Therefore, we propose to extract global features locally, i.e., among a limited number of neighbouring mentions, to combine the respective superiority of both models. In particular, we derive mention neighbours according to the syntactic distance on a dependency parse tree, and propose a tree connection method CoSimTC to measure the cross-tree distance between mentions. Besides, we extend the Graph...
Disambiguating named entities (NE) in running text to their correct interpretations in a specific kn...
We propose a novel entity disambiguation model, based on Deep Neural Network (DNN). Instead of utili...
Nowadays, the human textual data constitutes a great proportion of the shared information resources ...
Entity disambiguation (ED) aims to link textual mentions in a document to the correct named entities...
Entity linking is a process of linking mentions in a document with entities in a knowledge base. Col...
We propose a novel deep learning model for joint document-level entity disambiguation, which leverag...
Disambiguating named entities in natural-language text maps mentions of ambiguous names onto canonic...
Entity linking (also called entity disambiguation) aims to map the mentions in a given document to t...
Disambiguating named entities in natural-language text maps mentions of ambiguous names onto canonic...
For the task of entity disambiguation, mention contexts and entity descriptions both contain various...
Named entity disambiguation (NED) is a central problem in information extraction. The goal is to lin...
Entity Linking (EL) and Word Sense Disam-biguation (WSD) both address the lexical am-biguity of lang...
Named entity disambiguation is the task of disambiguating named entity mentions in natural language ...
In this paper we present a novel disambiguation model, based on neural networks. Most existing studi...
Collective entity disambiguation, or collective entity linking aims to jointly resolve multiple ment...
Disambiguating named entities (NE) in running text to their correct interpretations in a specific kn...
We propose a novel entity disambiguation model, based on Deep Neural Network (DNN). Instead of utili...
Nowadays, the human textual data constitutes a great proportion of the shared information resources ...
Entity disambiguation (ED) aims to link textual mentions in a document to the correct named entities...
Entity linking is a process of linking mentions in a document with entities in a knowledge base. Col...
We propose a novel deep learning model for joint document-level entity disambiguation, which leverag...
Disambiguating named entities in natural-language text maps mentions of ambiguous names onto canonic...
Entity linking (also called entity disambiguation) aims to map the mentions in a given document to t...
Disambiguating named entities in natural-language text maps mentions of ambiguous names onto canonic...
For the task of entity disambiguation, mention contexts and entity descriptions both contain various...
Named entity disambiguation (NED) is a central problem in information extraction. The goal is to lin...
Entity Linking (EL) and Word Sense Disam-biguation (WSD) both address the lexical am-biguity of lang...
Named entity disambiguation is the task of disambiguating named entity mentions in natural language ...
In this paper we present a novel disambiguation model, based on neural networks. Most existing studi...
Collective entity disambiguation, or collective entity linking aims to jointly resolve multiple ment...
Disambiguating named entities (NE) in running text to their correct interpretations in a specific kn...
We propose a novel entity disambiguation model, based on Deep Neural Network (DNN). Instead of utili...
Nowadays, the human textual data constitutes a great proportion of the shared information resources ...