This paper proposes a new approach for text categorization, based on a feature projection technique. In our approach, training data are represented as the projections of training documents on each feature. The voting for a classification is processed on the basis of individual feature projections. The final classification of test documents is determined by a majority voting from the individual classifications of each feature. Our empirical results show that the proposed approach, Text Categorization using Feature Projections (TCFP), outperforms k-NN, Rocchio, and Naive Bayes. Most of all, TCFP is a faster classifier, up to one hundred times faster than k-NN in the Newsgroups data set. It is also robust from noisy data. Since the TCFP algori...
Though naïve Bayes text classifiers are widely used because of its simplicity and effectiveness, the...
We tackle two different problems of text categorization, namely feature selection (FS) and classifie...
This paper focuses on a comparative evaluation of a wide-range of text categorization methods, inclu...
This paper proposes a new approach for text categorization, based on a feature projection technique....
We present an approach to text categorization using machine learning techniques. The approach is dev...
Abstract- Naïve-Bayes and k-NN classifiers are two machine learning approaches for text classificati...
Naïve Bayes, k-nearest neighbors, Adaboost, support vector machines and neural networks are five amo...
Text categorization is the task of discovering the category or class text documents belongs to, or i...
Naïve Bayes(NB), kNN and Adaboost are three commonly used text classifiers. Evaluation of these clas...
In this paper, we present a Bayesian classification approach for automatic text categorization using...
Supervised text categorization is a machine learning task where a predefined category label is autom...
We tackle two different problems of text categorization (TC), namely feature selection and classifie...
Text Categorization is the process of automatically assigning predefined categories to free text doc...
Text categorization is an important application of machine learning to the field of document informa...
This paper describes automatic document categorization based on large text hierarchy. We handle the...
Though naïve Bayes text classifiers are widely used because of its simplicity and effectiveness, the...
We tackle two different problems of text categorization, namely feature selection (FS) and classifie...
This paper focuses on a comparative evaluation of a wide-range of text categorization methods, inclu...
This paper proposes a new approach for text categorization, based on a feature projection technique....
We present an approach to text categorization using machine learning techniques. The approach is dev...
Abstract- Naïve-Bayes and k-NN classifiers are two machine learning approaches for text classificati...
Naïve Bayes, k-nearest neighbors, Adaboost, support vector machines and neural networks are five amo...
Text categorization is the task of discovering the category or class text documents belongs to, or i...
Naïve Bayes(NB), kNN and Adaboost are three commonly used text classifiers. Evaluation of these clas...
In this paper, we present a Bayesian classification approach for automatic text categorization using...
Supervised text categorization is a machine learning task where a predefined category label is autom...
We tackle two different problems of text categorization (TC), namely feature selection and classifie...
Text Categorization is the process of automatically assigning predefined categories to free text doc...
Text categorization is an important application of machine learning to the field of document informa...
This paper describes automatic document categorization based on large text hierarchy. We handle the...
Though naïve Bayes text classifiers are widely used because of its simplicity and effectiveness, the...
We tackle two different problems of text categorization, namely feature selection (FS) and classifie...
This paper focuses on a comparative evaluation of a wide-range of text categorization methods, inclu...