Title :
Unsupervised learning of sigmoid perceptron
Author :
Uykan, Zekeriya ; Koivo, Heikki N.
Author_Institution :
Control Eng. Lab., Helsinki Univ. of Technol., Espoo, Finland
Abstract :
A previous paper has derived a clustering-based upper bound on mean squared output error of radial basis function networks that explicitly depends on the network parameters. In this study we focus on single-hidden-layer-sigmoid perceptron. Using the analysis of the previous paper, this paper (i) presents a similar upper bound on output error of the sigmoid perceptron and the upper bound can be made arbitrarily small by increasing the number of sigmoid units, and (ii) proposes unsupervised type learning of input-layer (synaptic) weights in contrast to traditional gradient-descent type supervised learning, i.e., the proposed method minimizes the upper bound by a clustering algorithm for determining the input-layer weights in contrast to the gradient-descent type algorithm minimizing the output error, which is traditionally used in the design of the perceptron. The simulation results show that (i) the proposed hierarchical method requires less time for learning when compared to gradient-descent-type supervised algorithm, (ii) it yields comparable performance in comparison with radial basis function network, and (iii) the upper bounds minimized during the clustering are quite tight to the output error function
Keywords :
digital simulation; error analysis; radial basis function networks; unsupervised learning; clustering algorithm; clustering-based upper bound; gradient-descent-type supervised algorithm; input-layer weights; mean squared output error; network parameters; output error function; output error upper bound; performance; radial basis function network; radial basis function networks; simulation results; single-hidden-layer-sigmoid perceptron; synaptic weights; unsupervised learning; Algorithm design and analysis; Backpropagation algorithms; Clustering algorithms; Control engineering; Laboratories; Neurons; Radial basis function networks; Supervised learning; Unsupervised learning; Vectors;
Conference_Titel :
Acoustics, Speech, and Signal Processing, 2000. ICASSP '00. Proceedings. 2000 IEEE International Conference on
Conference_Location :
Istanbul
Print_ISBN :
0-7803-6293-4
DOI :
10.1109/ICASSP.2000.860152