Title :
Feature transformation methods in data mining
Author_Institution :
Intelligent Syst. Lab., Iowa Univ., Iowa City, IA, USA
fDate :
7/1/2001 12:00:00 AM
Abstract :
The quality of knowledge extracted from a data set can be enhanced by its transformation. Discretization and filling missing data are the most common forms of data transformation. A new transformation method named feature bundling is introduced. A feature bundle involves a set of features in its pure or transformed form. The computational results reported in this paper show that the classification accuracy of decision rules generated from data sets with feature bundles is enhanced. The proposed concept of feature bundling is applied to a data set from the semiconductor industry
Keywords :
classification; data mining; decision support systems; electronics industry; classification accuracy; computational results; data mining; decision rules; feature bundles; feature bundling; feature transformation methods; semiconductor industry; Data mining; Decision making; Decision trees; Electronics industry; Filling; Helium; Machine learning algorithms; Spatial databases; Tree graphs; Vectors;
Journal_Title :
Electronics Packaging Manufacturing, IEEE Transactions on
DOI :
10.1109/6104.956807