Autores
Cruz Torres Benjamín
Barrón Fernández Ricardo
Sossa Azuela Juan Humberto
Título A New Unsupervised Learning for Clustering Using Geometric Associative Memories
Tipo Congreso
Sub-tipo SCOPUS
Descripción Lecture Notes in Computer Science
Resumen Associative memories (AMs) have been extensively used during the last 40 years for pattern classification and pattern restoration. A new type of AMs have been developed recently, the so-called Geometric Associative Memories (GAMs), these make use of Conformal Geometric Algebra (CGA) operators and operations for their working. GAM’s, at the beginning, were developed for supervised classification, getting good results. In this work an algorithm for unsupervised learning with GAMs will be introduced. This new idea is a variation of the k-means algorithm that takes into account the patterns of the a specific cluster and the patterns of another clusters to generate a separation surface. Numerical examples are presented to show the functioning of the new algorithm.
Observaciones 14th Iberoamerican Conference on Pattern Recognition, CIARP 2009; Code 83218; ISBN: 3642102670;978-364210267-7
Lugar Guadalajara, Jalisco
País Mexico
No. de páginas 239-246
Vol. / Cap. 5856
Inicio 2009-11-15
Fin 2009-11-18
ISBN/ISSN 3642102670;978-36421