Representing natural language sentences has always been a challenge in statistical language modelling. Atomic discrete representations of words make it difficult to represent semantically related sentences. Other sentence components such as phrases and named-entities should be recognized and given representations as units instead of individual words. Different entity senses should be assigned different representations regardless the fact that they share identical words. In this paper, we focus on building the vector representations (embeddings) of named-entities from their contexts to facilitate the task of ontology population where named-entities need to be recognized and disambiguated in natural language text. Given a list of target named...
Natural Language is a mean to express and discuss concepts, which are taken to be abstractions from ...
This thesis deals with the named entity recognition (NER) in text. It is realized by machine learnin...
Entities such as people, locations, organizations play a key role in natural language understanding....
Representing natural language sentences has always been a challenge in statistical language modellin...
Natural Language is a mean to express and discuss about concepts, objects, events, i.e. it carries s...
The recently introduced Word2vec and GloVe models are efficient methods to build quality word embedd...
Methods for representing the meaning of words in vector spaces purely using the information distribu...
Most state-of-the-art approaches for named-entity recognition (NER) use semi supervised information ...
Entities are a central element of knowledge bases and are important input to many knowledge-centric ...
In this master thesis we describe a method for linking named entities in a given text to a knowledge...
Abstract Background Although there is an enormous number of textual resources in the biomedical doma...
Language Models have long been a prolific area of study in the field of Natural Language Processing ...
An entity embedding is a vector space representation of entities in which similar entities have simi...
abstract: In recent years, several methods have been proposed to encode sentences into fixed length ...
Extracting and disambiguating entities and concepts is a crucial step toward understanding natural l...
Natural Language is a mean to express and discuss concepts, which are taken to be abstractions from ...
This thesis deals with the named entity recognition (NER) in text. It is realized by machine learnin...
Entities such as people, locations, organizations play a key role in natural language understanding....
Representing natural language sentences has always been a challenge in statistical language modellin...
Natural Language is a mean to express and discuss about concepts, objects, events, i.e. it carries s...
The recently introduced Word2vec and GloVe models are efficient methods to build quality word embedd...
Methods for representing the meaning of words in vector spaces purely using the information distribu...
Most state-of-the-art approaches for named-entity recognition (NER) use semi supervised information ...
Entities are a central element of knowledge bases and are important input to many knowledge-centric ...
In this master thesis we describe a method for linking named entities in a given text to a knowledge...
Abstract Background Although there is an enormous number of textual resources in the biomedical doma...
Language Models have long been a prolific area of study in the field of Natural Language Processing ...
An entity embedding is a vector space representation of entities in which similar entities have simi...
abstract: In recent years, several methods have been proposed to encode sentences into fixed length ...
Extracting and disambiguating entities and concepts is a crucial step toward understanding natural l...
Natural Language is a mean to express and discuss concepts, which are taken to be abstractions from ...
This thesis deals with the named entity recognition (NER) in text. It is realized by machine learnin...
Entities such as people, locations, organizations play a key role in natural language understanding....