Title :
Topographic map formation by maximizing unconditional entropy: a plausible strategy for “online” unsupervised competitive learning and nonparametric density estimation
Author :
Van Hulle, Marc M.
Author_Institution :
Lab. voor Neuro- en Psychofysiologie, Katholieke Univ., Leuven, Belgium
fDate :
9/1/1996 12:00:00 AM
Abstract :
An unsupervised competitive learning rule, called the vectorial boundary adaptation rule (VBAR), is introduced for topographic map formation. Since VBAR is aimed at producing an equiprobable quantization of the input space, it yields a nonparametric model of the input probability density function. Furthermore, since equiprobable quantization is equivalent to unconditional entropy maximization, we argue that this is a plausible strategy for maximizing mutual information (Shannon information rate) in the case of “online” learning. We use mutual information as a tool for comparing the performance of our rule with Kohonen´s self-organizing (feature) map algorithm
Keywords :
maximum entropy methods; probability; quantisation (signal); self-organising feature maps; unsupervised learning; Kohonen self-organizing feature map; Shannon information rate; equiprobable quantization; nonparametric density estimation; probability density function; topographic map formation; unconditional entropy maximization; unsupervised competitive learning; vectorial boundary adaptation rule; Data mining; Entropy; Information rates; Lattices; Learning systems; Mutual information; Neurons; Probability density function; Quantization; Supervised learning;
Journal_Title :
Neural Networks, IEEE Transactions on