DocumentCode :
2625786
Title :
A Meta-cognitive Fully Complex-valued Fast Learning Classifier for real-valued classification problems
Author :
Sivachitra, M. ; Vijayachitra, S.
Author_Institution :
Dept. of Electr. & Electron. Eng, Kongu Eng. Coll., Perundurai, India
fYear :
2015
fDate :
3-4 March 2015
Firstpage :
1
Lastpage :
6
Abstract :
In this article, a Meta-cognitive Fully Complex-valued Fast Learning Classifier (Mc-FCFLC) for solving real-valued classification problems is presented. Mc-FCFLC consist of two components namely, a cognitive component and a meta-cognitive one. The cognitive component of Mc-FCFLC is a single hidden layer network (FCFLC) with a nonlinear input and hidden layer, and a linear output layer. The meta-cognitive component of Mc-FCFLC consist of a self-regulatory learning mechanism that chooses a best learning strategy among what-to-learn, when-to-learn and how-to-learn for a given sample. The sample is either deleted, used for adding a new neuron or else it is reserved for future use. Thus the architecture of Mc-FCFLC is constructed during the training process. The performance of the Mc-FCFLC is evaluated with the other complex-valued and a few best performing real-valued classifiers on a set of benchmark classification problems obtained from the UCI machine learning repository. Further, a practical acoustic emission signal classification problem has been addressed. Performance results demonstrate that Mc-FCFLC has better classification ability than the other classifiers existing in the literature.
Keywords :
acoustic signal processing; learning (artificial intelligence); neural nets; pattern classification; signal classification; Mc-FCFLC; UCI machine learning repository; acoustic emission signal classification problem; cognitive component; how-to-learn; linear output layer; meta-cognitive component; meta-cognitive fully complex-valued fast learning classifier; nonlinear input; real-valued classification problems; self-regulatory learning mechanism; single hidden layer network; training process; what-to-learn; when-to-learn; Acoustic emission; Benchmark testing; Brain modeling; Neurons; Support vector machines; Training;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Cognitive Computing and Information Processing (CCIP), 2015 International Conference on
Conference_Location :
Noida
Type :
conf
DOI :
10.1109/CCIP.2015.7100712
Filename :
7100712
Link To Document :
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