Abstract

We introduce a new text categorization method for documentary databases. The proposed method is an extension of the Naive Bayes text categorization model which allows obtaining good performance results in documentary databases with unbalanced training data. Experimental results allow us to conclude that the categorization method overcomes Naive Bayes and compares favorably with more sophisticated categorization methods such as support vector machines and logistic regression without increasing the use of computational resources in the training phase. [PUBLICATION ABSTRACT]

Details

Title
Categorización de texto en bases documentales a partir de modelos computacionales livianos
Author
Mendoza, Marcelo; Ortiz, Ivette; Rojas, Victor
Pages
n/a
Publication year
2011
Publication date
2011
Publisher
Dr. Giovanni Parodi
ISSN
00350451
e-ISSN
07180934
Source type
Scholarly Journal
Language of publication
Spanish
ProQuest document ID
1017664216
Copyright
Copyright Dr. Giovanni Parodi Dec 2011