Supervised text classification is the task of automatically assigning a category label to a previously unlabeled text document. We start with a collection of pre-labeled examples whose assigned categories are used to build a predictive model for each category. In previous research, incorporating semantic features from the WordNet lexical database is one of many approaches that have been tried to improve the predictive accuracy of text classification models. The intuition is that words in the training set alone may not be extensive enough to enable the generation of a universal model for a category, but through Word-Net expansion (i.e., incorporating words defined by various relationships in WordNet), a more accurate model may be possible. I...
peer-reviewedAutomatic Text Classification (ATC) is one of the most important tasks in data mining f...
Text classification techniques such as Bayesian classifiers have been proved to be giving as good or...
This paper proposes an efficient algorithm for the generation of new features that enrich the known ...
Incorporating semantic features from the WordNet lexical database is among one of the many approache...
Incorporating semantic features from the WordNet lexical database is among one of the many approache...
The need for an automated text categorization system is spurred on by the extensive increase of digi...
For both classification and retrieval of natural language text documents, the standard document repr...
We study the performance of two representations of word meaning in learning noun-modifier semantic r...
Naïve Bayes, k-nearest neighbors, Adaboost, support vector machines and neural networks are five amo...
Lexical databases following the wordnet paradigm capture information about words, word senses, and t...
An approach that incorporates WordNet features to an n-gram language modeler has been developed in t...
This paper describes a semi-automatic method of inducing underspecified semantic classes from WordNe...
Text data mining is the process of extracting and analyzing valuable information from text. A text d...
This paper introduces a term weighting method for text categorization based on smoothing ideas borro...
Abstract. This paper presents a new method to enrich semantically WordNet with categories from gener...
peer-reviewedAutomatic Text Classification (ATC) is one of the most important tasks in data mining f...
Text classification techniques such as Bayesian classifiers have been proved to be giving as good or...
This paper proposes an efficient algorithm for the generation of new features that enrich the known ...
Incorporating semantic features from the WordNet lexical database is among one of the many approache...
Incorporating semantic features from the WordNet lexical database is among one of the many approache...
The need for an automated text categorization system is spurred on by the extensive increase of digi...
For both classification and retrieval of natural language text documents, the standard document repr...
We study the performance of two representations of word meaning in learning noun-modifier semantic r...
Naïve Bayes, k-nearest neighbors, Adaboost, support vector machines and neural networks are five amo...
Lexical databases following the wordnet paradigm capture information about words, word senses, and t...
An approach that incorporates WordNet features to an n-gram language modeler has been developed in t...
This paper describes a semi-automatic method of inducing underspecified semantic classes from WordNe...
Text data mining is the process of extracting and analyzing valuable information from text. A text d...
This paper introduces a term weighting method for text categorization based on smoothing ideas borro...
Abstract. This paper presents a new method to enrich semantically WordNet with categories from gener...
peer-reviewedAutomatic Text Classification (ATC) is one of the most important tasks in data mining f...
Text classification techniques such as Bayesian classifiers have been proved to be giving as good or...
This paper proposes an efficient algorithm for the generation of new features that enrich the known ...