Sciweavers

IEAAIE
2003
Springer

Fast Feature Selection by Means of Projections

13 years 10 months ago
Fast Feature Selection by Means of Projections
The attribute selection techniques for supervised learning, used in the preprocessing phase to emphasize the most relevant attributes, allow making models of classification simpler and easy to understand. The algorithm (SOAP: Selection of Attributes by Projection) has some interesting characteristics: lower computational cost (O(m n log n) m attributes and n examples in the data set) with respect to other typical algorithms due to the absence of distance and statistical calculations; its applicability to any labelled data set, that is to say, it can contain continuous and discrete variables, with no need for transformation. The performance of SOAP is analyzed in two ways: percentage of reduction and classification. SOAP has been compared to CFS [4] and ReliefF [6]. The results are generated by C4.5 before and after the application of the algorithms.
Roberto Ruiz, José Cristóbal Riquelm
Added 07 Jul 2010
Updated 07 Jul 2010
Type Conference
Year 2003
Where IEAAIE
Authors Roberto Ruiz, José Cristóbal Riquelme Santos, Jesús S. Aguilar-Ruiz
Comments (0)