Capítulo de Libro
Mining Low Dimensionality Data Streams of Continuous Attributes
Autor/es | Ferrer Troyano, Francisco Javier
Aguilar Ruiz, Jesús Salvador Riquelme Santos, José Cristóbal |
Departamento | Universidad de Sevilla. Departamento de Lenguajes y Sistemas Informáticos |
Fecha de publicación | 2003 |
Fecha de depósito | 2016-03-31 |
Publicado en |
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Resumen | This paper presents an incremental and scalable learning algorithm in order to mine numeric, low dimensionality, high–cardinality, time–changing data streams. Within the Supervised Learning field, our approach, named ... This paper presents an incremental and scalable learning algorithm in order to mine numeric, low dimensionality, high–cardinality, time–changing data streams. Within the Supervised Learning field, our approach, named SCALLOP, provides a set of decision rules whose size is very near to the number of concepts to be extracted. Experimental results with synthetic databases of different complexity degrees show a good performance from streams of data received at a rapid rate, whose label distribution may not be stationary in time. |
Ficheros | Tamaño | Formato | Ver | Descripción |
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Mining low.pdf | 580.6Kb | [PDF] | Ver/ | |