Title :
A learning model for multiple-prototype classification of strings
Author :
Cárdenas, Ramón A Mollineda
Author_Institution :
Universitat Jaume I, Castellon, Spain
Abstract :
An iterative learning method to update labeled string prototypes for a 1-nearest prototype (1-np) classification is introduced. Given a (typically reduced) set of initial string prototypes and a training set, it iteratively updates prototypes to better discriminate training samples. The update rule, which is based on the edit distance, adjusts a prototype by removing those local differences which are both frequent with respect to same-class closer training strings and infrequent with respect to different-class closer training strings. Closer training strings are defined by unsupervised clustering. The process continues until prototypes converge. Its main innovation is to provide a non-random local update rule to "move" a string prototype towards a number of string samples. A series of learning/classification experiments show a better 1-np performance of the updated prototypes with respect to the initial ones, that were originally selected to guarantee a good classification.
Keywords :
iterative methods; pattern classification; pattern clustering; prototypes; unsupervised learning; 1-nearest prototype classification; different-class closer training string; iterative learning method; labeled string prototype; learning model; multiple-prototype string classification; nonrandom local update rule; same-class closer training string; training set; unsupervised clustering; Data structures; Error analysis; Euclidean distance; Iterative methods; Learning systems; Pattern recognition; Power generation; Prototypes; Technological innovation; Training data;
Conference_Titel :
Pattern Recognition, 2004. ICPR 2004. Proceedings of the 17th International Conference on
Print_ISBN :
0-7695-2128-2
DOI :
10.1109/ICPR.2004.1333792