Abstract:
Learning from examples plays a central role in artificial neural networks. The success of many learning schemes is not guaranteed, however, since algorithms like backprop...Show MoreMetadata
Abstract:
Learning from examples plays a central role in artificial neural networks. The success of many learning schemes is not guaranteed, however, since algorithms like backpropagation may get stuck in local minima, thus providing suboptimal solutions. For feedforward networks, optimal learning can be achieved provided that certain conditions on the network and the learning environment are met. This principle is investigated for the case of networks using radial basis functions (RBF). It is assumed that the patterns of the learning environment are separable by hyperspheres. In that case, we prove that the attached cost function is local minima free with respect to all the weights. This provides us with some theoretical foundations for a massive application of RBF in pattern recognition.<>
Published in: IEEE Transactions on Neural Networks ( Volume: 6, Issue: 3, May 1995)
DOI: 10.1109/72.377979
Automatic detection of epileptiform events in EEG by a three-stage procedure based on artificial neural networks
N. Acir,I. Oztura,M. Kuntalp,B. Baklan,C. Guzelis
Breast cancer diagnosis using Artificial Neural Network models
R. R. Janghel,Anupam Shukla,Ritu Tiwari,Rahul Kala
Analysis & survey on fault tolerance in radial basis function networks
Richa Martolia,Amit Jain,Laxya Singla
Artificial Neural Networks Based Image Processing & Pattern Recognition: From Concepts to Real-World Applications
Kurosh Madani
Data mining of electricity price forecasting with regression tree and normalized radial basis function network
Hiroyuki Mori,Akira Awata
Modeling surface roughness based on artificial neural network in mould polishing process
Guilian Wang,Haibo Zhou,Yiqiang Wang,Xiuhua Yuan
Analysis of Artificial Neural Network Based Algorithms For Real Time Dispatching
Shiladitya Chakravorty,Nagendra N. Nagarur
On the relationships between statistical pattern recognition and artificial neural networks
C.H. Chen
Artificial neural networks modelling for surface roughness in wire electrical discharge machining of Incoloy 800H
Uma Maheshwera Reddy Paturi,Sheshank Reddy Goturi,Omkar Sunil Sahasra Bhojane,Nandan Konidhala,Achintya Vamshi Nudurupati,N.S. Reddy
Rule extraction from differential evolution trained radial basis function network using genetic algorithms
Nekuri Naveen,V. Ravi,C. Raghavendra Rao