Title of article :
A novel Self-Organizing Map (SOM) learning algorithm with nearest and farthest neurons
Author/Authors :
Chaudhary, Vikas National Institute of Technology (N.I.T.), India , Bhatia, R.S. National Institute of Technology (N.I.T.), India , Ahlawat, Anil K. Krishna Institute of Engineering Technology, India
Abstract :
The Self-Organizing Map (SOM) has applications like dimension reduction, data clustering, image analysis, and many others. In conventional SOM, the weights of the winner and its neighboring neurons are updated regardless of their distance from the input vector. In the proposed SOM, the farthest and nearest neurons from among the 1-neighborhood of the winner neuron, and also the winning frequency of each neuron are found out and taken into account while updating the weight. This new SOM is applied to various input data sets and the learning performance is evaluated using three standard measurements. It is confirmed that modified SOM obtained a far better result and better effective mapping as compared to the conventional SOM, which reflects the input data distribution.
Keywords :
Self , Organizing Map (SOM) , Farthest neuron , Nearest neuron , Winning frequency , Neighborhood neurons
Journal title :
Alexandria Engineering Journal
Journal title :
Alexandria Engineering Journal