Benner
   
Mohammed Falih Aljanbi ( Lecturer )
College Engineering - Electronics and Communication
[email protected]
 
 
 
Analysis of Multiple Classifier Systems Using Product and Modified Product Rules
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General Speciality:
Mohammed Falih Hassan Author Name:
Ikhlas Abdel-Qader Co Authors Names:
IEEE Publisher Name:
Proceedings of the 2015 IEEE International Conference on Electro/Information Technology (EIT), Northern Illinois University, Illinois, USA, 2015.  
2015 Publication Year:

Abstract

One of the key factors in designing a successful multiple classifier system (MCS) is choosing an appropriate combining rule. Many theoretical and experimental efforts have been focused on estimating the probability of classification error for different combining rules. In this work, assuming N classifiers and two independent and identically distributed classes, we investigate using product and modified product rules and derive formulas to estimate their classification error probability under two class distributions, Gaussian and uniform. We also validate our derivations with computer simulations. The performance results of product, modified product, average, and majority vote rules are compared. The comparisons are done in term of probability of classification error as a function of class variance and number of classifiers. The results show that the modified product rule outperforms others while the product rule ranks last.