Title :
Stochastic analysis and comparison of Kohonen SOM with optimal filter
Author :
Yin, H. ; Alinson, N.M.
Author_Institution :
York Univ., UK
Abstract :
In this paper a detailed investigation of the statistical and convergent properties of Kohonen´s self-organising map (SOM) algorithm is presented. The central limit theorem has been extended and then applied to prove that the feature space in SOM learning is an approximation to Gaussian distributed stochastic processes, and will eventually converge in the mean-square sense to the density centres of the input probabilistic sub-domains. We demonstrate that by combining the SOM with a Kalman filter will smooth and accelerate the learning and convergence of the SOM, especially in early training stages. We also present a discussion on the local optimisation problem of the SOM algorithm
Keywords :
convergence; filtering and prediction theory; learning (artificial intelligence); probability; self-organising feature maps; stochastic processes; Gaussian distributed stochastic processes; Kalman filter; Kohonen´s self-organising map; central limit theorem; convergent properties; density centres; feature space; input probabilistic sub-domains; learning; mean-square; neural nets;
Conference_Titel :
Artificial Neural Networks, 1993., Third International Conference on
Conference_Location :
Brighton
Print_ISBN :
0-85296-573-7