Text classification using semantic information is the latest trend of research due to its greater potential to accurately represent text content compared with bag-of-words (BOW) approaches. On the other hand, representation of semantics through graphs has several advantages over the traditional representation of feature vector. Therefore, error tol- erant graph matching techniques can be used for text classification. Nev- ertheless, very few methodologies exist in the literature which use seman- tic representation through graphs. In the present work, a methodology has been proposed to represent semantic information from a summa- rized text into a graph. The discourse representation structure of a text is utilized in order to represent its s...
Knowledge graphs are becoming ubiquitous in many scientific and industrial domains, ranging from bio...
Text classification is an important and classical problem in natural language processing. There have...
Most text classification systems use bag-of-words represen- tation of documents to find the classifi...
Nowadays semantic information of text is used largely for text classification task instead of bag-of...
The most common approach to the text classification problem is to use a bag-of-words representation ...
Text Analytics using semantic information is the latest trend of research due to its potential to re...
Text Analytics using semantic information is the latest trend of research due to its potential to re...
The main topic of this doctoral dissertation is the extraction of valuable in- formation associate...
Over the last few years, a number of ar-eas of natural language processing have begun applying graph...
Thesis (Ph.D.)--University of Washington, 2012Lexical semantics studies the meaning of words, which ...
Graph embedding is an important representational technique that aims to maintain the structure of a ...
International audienceGraphs have been widely used as modeling tools in Natural Language Processing ...
Text classification is a fundamental research direction, aims to assign tags to text units. Recently...
International audienceContrary to the traditional Bag-of-Words approach, we consider the Graph-of-Wo...
Text representation models are the fundamental basis for information retrieval and text mining tasks...
Knowledge graphs are becoming ubiquitous in many scientific and industrial domains, ranging from bio...
Text classification is an important and classical problem in natural language processing. There have...
Most text classification systems use bag-of-words represen- tation of documents to find the classifi...
Nowadays semantic information of text is used largely for text classification task instead of bag-of...
The most common approach to the text classification problem is to use a bag-of-words representation ...
Text Analytics using semantic information is the latest trend of research due to its potential to re...
Text Analytics using semantic information is the latest trend of research due to its potential to re...
The main topic of this doctoral dissertation is the extraction of valuable in- formation associate...
Over the last few years, a number of ar-eas of natural language processing have begun applying graph...
Thesis (Ph.D.)--University of Washington, 2012Lexical semantics studies the meaning of words, which ...
Graph embedding is an important representational technique that aims to maintain the structure of a ...
International audienceGraphs have been widely used as modeling tools in Natural Language Processing ...
Text classification is a fundamental research direction, aims to assign tags to text units. Recently...
International audienceContrary to the traditional Bag-of-Words approach, we consider the Graph-of-Wo...
Text representation models are the fundamental basis for information retrieval and text mining tasks...
Knowledge graphs are becoming ubiquitous in many scientific and industrial domains, ranging from bio...
Text classification is an important and classical problem in natural language processing. There have...
Most text classification systems use bag-of-words represen- tation of documents to find the classifi...