Title :
MLMVN With Soft Margins Learning
Author_Institution :
Texas A&M Univ.-Texarkana, Texarkana, TX, USA
Abstract :
In this paper, we consider a modified error-correction learning rule for the multilayer neural network with multivalued neurons (MLMVN). This modification is based on the soft margins technique, which leads to the minimization of the distance between a cluster center and the learning samples belonging to this cluster. MLMVN has a derivative-free learning algorithm based on the error-correction learning rule and demonstrate a higher functionality and better generalization capability than a number of other machine learning techniques. The discrete k-valued multivalued neuron activation function divides a complex plane into k equal sectors. For more efficient and reliable solving of classification problems it is possible to modify the MLMVN learning algorithm in such a way that learning samples belonging to different classes (clusters) will be located as close as possible to the bisector of a desired sector (the cluster center) and as far as possible from each other, respectively. Such a modification based on the soft margins learning technique is considered in this paper. This modified learning algorithm improves the generalization capability of MLMVN when solving classification problems.
Keywords :
error correction; learning (artificial intelligence); multilayer perceptrons; pattern classification; pattern clustering; MLMVN; classification problems; cluster center; derivative-free learning algorithm; discrete k-valued multivalued neuron activation function; error-correction learning rule; learning samples; machine learning techniques; multilayer neural network with multivalued neurons; soft margins learning; soft margins technique; Backpropagation; Biological neural networks; Clustering algorithms; Neurons; Nonhomogeneous media; Support vector machines; Classification; MVN; complex-valued neural networks (CVNNs); multilayer neural network with multivalued neuron (MLMVN); soft margins; soft margins.;
Journal_Title :
Neural Networks and Learning Systems, IEEE Transactions on
DOI :
10.1109/TNNLS.2014.2301802