Title of article :
Adapted variable precision rough set approach for EEG analysis
Author/Authors :
Ningler، نويسنده , , Michael and Stockmanns، نويسنده , , Gudrun and Schneider، نويسنده , , Gerhard and Kochs، نويسنده , , Hans-Dieter and Kochs، نويسنده , , Eberhard، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2009
Abstract :
SummaryObjective
set theory (RST) provides powerful methods for reduction of attributes and creation of decision rules, which have successfully been applied in numerous medical applications. The variable precision rough set model (VPRS model), an extension of the original rough set approach, tolerates some degree of misclassification of the training data. The basic idea of the VPRS model is to change the class information of those objects whose class information cannot be induced without contradiction from the available attributes. Thereafter, original methods of RST are applied.
roach of this model is presented that allows uncertain objects to change class information during the process of attribute reduction and rule generation. This method is referred to as variable precision rough set approach with flexible classification of uncertain objects (VPRS(FC) approach) and needs only slight modifications of the original VPRS model.
s and material
pare the VPRS model and VPRS(FC) approach both methods are applied to a clinical data set based on electroencephalogram of awake and anesthetized patients. For comparison, a second data set obtained from the UCI machine learning repository is used. It describes the shape of different vehicle types. Further well known feature selection methods were applied to both data sets to compare their results with the results provided by rough set based approaches.
s
RS(FC) approach requires higher computational effort, but is able to achieve better reduction of attributes for noisy or inconsistent data and provides smaller rule sets.
sion
esented approach is a useful method for substantial attribute reduction in noisy and inconsistent data sets.
Keywords :
Feature selection based on rough sets , Classification with decision rules , Variable precision rough set model , Noisy data , Inconsistent data , Anesthesia , electroencephalogram
Journal title :
Artificial Intelligence In Medicine
Journal title :
Artificial Intelligence In Medicine