DocumentCode
2933800
Title
An Ensemble Classification Method Based on Input Clustering and Classifiers Expected Reliability
Author
Vannucci, M. ; Colla, V. ; Vannocci, Marco ; Nastasi, Gianluca
Author_Institution
PERCRO Lab., TeCIP Inst., Pisa, Italy
fYear
2012
fDate
14-16 Nov. 2012
Firstpage
3
Lastpage
8
Abstract
In this paper a novel ensemble method (EM) for classification tasks is described. The proposed approach is based on the use of a set of classifiers, each of which is trained by exploiting a different subset of the available training data, which are created by partitioning the input space by means of a self organizing map (SOM) based clustering algorithm. Subsequently, the reliability of each classifier belonging to the ensemble is measured according to the classification accuracy on whole dataset and each classifier is associated to a feed forward neural network, which is able to self-estimate the reliability of single classifiers when coping with a new data. The estimated reliabilities are used in the ensemble aggregation phase in order to provide the final classification of new patterns. The method, tested on literature datasets coming from the UCI repository, achieved satisfactory results improving the classification accuracy with respect to other popular ensemble techniques.
Keywords
feedforward neural nets; pattern classification; pattern clustering; reliability; self-organising feature maps; SOM based clustering algorithm; UCI repository; classification tasks; classifier expected reliability; classifier reliability; ensemble aggregation phase; ensemble classification method; feedforward neural network; input clustering; self organizing map based clustering algorithm; training data; Accuracy; Bagging; Decision trees; Estimation; Neural networks; Reliability; Training; classification; ensemble learning; neural networks; reliability;
fLanguage
English
Publisher
ieee
Conference_Titel
Computer Modeling and Simulation (EMS), 2012 Sixth UKSim/AMSS European Symposium on
Conference_Location
Valetta
Print_ISBN
978-1-4673-4977-2
Type
conf
DOI
10.1109/EMS.2012.10
Filename
6410120
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