The increasing volume of available documents in the World Wide Web has turned the document indexing and searching more and more complex. This issue has motivated the development of several researches in the text classification area. However, the techniques resulting from these researches require human intervention to choose the more adequate parameters to carry on the classification. Motivated by such limitation, this article presents a new model for the text automatic classification
1. This model uses a self-organizing artificial neural network architecture, which does not require previous knowledge on the domains to be classified. The document features, in a word radical frequency format, are submitted to such architecture, what generates clusters with similar sets of documents. The model deals with stages of feature extraction, classification, labeling and indexing of documents for searching purposes. The classification stage, receives the radical frequency vectors, submit them to the ART-2A neural network that classifies them and stores the patterns in clusters, based on their similarity