Among fuzzy classifiers, Min-Max networks have the advantage to be trained in a constructive way, by a simple learning procedure. The classification strategy of Simpson's Min-Max classifier consists in covering the training data with hyperboxes constrained to have their boundary surfaces parallel to the coordinate axes of the chosen reference system. In order to obtain a more accurate data coverage, it is possible to adopt a new classification model which allows to arrange the hyperboxes orientation along any direction of the data space. The training algorithm is based on the ARC/PARC technique, which already yields better performances with respect to the original Simpson's algorithm. Although the most important feature of a classifier is its generalization capability, the effectiveness of a training procedure is strictly related to its automation degree. A low automation degree can be a serious drawback for a classification system, since it can prevent an unskilled user from successfully generate an acceptable model. From this point of view, a learning procedure should not depend on any critical parameter. The automation degree of the new classification system is evaluated in the paper.
Automatic training of generalized Min-Max classifiers / Rizzi, Antonello; Panella, Massimo; FRATTALE MASCIOLI, Fabio Massimo; Martinelli, Giuseppe. - STAMPA. - 5:(2001), pp. 3070-3075. (Intervento presentato al convegno 9th International-Fuzzy-Systems-Association World Congress/20th North-American-Fuzzy-Information-Processing-Society, International Conference tenutosi a VANCOUVER, CANADA nel JUL 25-28, 2001) [10.1109/nafips.2001.943718].
Automatic training of generalized Min-Max classifiers
RIZZI, Antonello;PANELLA, Massimo;FRATTALE MASCIOLI, Fabio Massimo;MARTINELLI, Giuseppe
2001
Abstract
Among fuzzy classifiers, Min-Max networks have the advantage to be trained in a constructive way, by a simple learning procedure. The classification strategy of Simpson's Min-Max classifier consists in covering the training data with hyperboxes constrained to have their boundary surfaces parallel to the coordinate axes of the chosen reference system. In order to obtain a more accurate data coverage, it is possible to adopt a new classification model which allows to arrange the hyperboxes orientation along any direction of the data space. The training algorithm is based on the ARC/PARC technique, which already yields better performances with respect to the original Simpson's algorithm. Although the most important feature of a classifier is its generalization capability, the effectiveness of a training procedure is strictly related to its automation degree. A low automation degree can be a serious drawback for a classification system, since it can prevent an unskilled user from successfully generate an acceptable model. From this point of view, a learning procedure should not depend on any critical parameter. The automation degree of the new classification system is evaluated in the paper.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.