Title of article :
A reduced probabilistic neural network for the classification of large databases
Author/Authors :
LOTFI, Abdelhadi University of Sciences and Technologies of Oran Mohamed Boudiaf - Department of Computer Science , Signal Image Parole Laboratory, Algeria , BENYETTOU, Abdelkader University of Sciences and Technologies of Oran Mohamed Boudiaf - Department of Computer Science , Signal Image Parole Laboratory, Algeria
From page :
979
To page :
989
Abstract :
The probabilistic neural network (PNN) is a special type of radial basis neural network used mainly for classification problems. Due to the size of the network after training, this type of network is usually used for problems with a small-sized training dataset. in this paper, a new training algorithm is presented for use with large training databases. Application to the handwritten digit database shows that the reduced PNN performs better than the standard PNN for all of the studied cases with a big gain in size and processing speed. This new type of neural network can be used easily for problems with large training databases like biometrics and data mining applications. An extension of the network is possible for new training samples and/or classes without retraining.
Keywords :
Classification , pattern recognition , reduced probabilistic neural network , handwritten digit recognition , optimization
Journal title :
Turkish Journal of Electrical Engineering and Computer Sciences
Journal title :
Turkish Journal of Electrical Engineering and Computer Sciences
Record number :
2532793
Link To Document :
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