Repairs to GLVQ: a new family of competitive learning schemes
- 1 September 1996
- journal article
- Published by Institute of Electrical and Electronics Engineers (IEEE) in IEEE Transactions on Neural Networks
- Vol. 7 (5) , 1062-1071
- https://doi.org/10.1109/72.536304
Abstract
First, we identify an algorithmic defect of the generalized learning vector quantization (GLVQ) scheme that causes it to behave erratically for a certain scaling of the input data. We show that GLVQ can behave incorrectly because its learning rates are reciprocally dependent on the sum of squares of distances from an input vector to the node weight vectors. Finally, we propose a new family of models-the GLVQ-F family-that remedies the problem. We derive competitive learning algorithms for each member of the GLVQ-F model and prove that they are invariant to all scalings of the data. We show that GLVQ-F offers a wide range of learning models since it reduces to LVQ as its weighting exponent (a parameter of the algorithm) approaches one from above. As this parameter increases, GLVQ-F then transitions to a model in which either all nodes may be excited according to their (inverse) distances from an input or in which the winner is excited while losers are penalized. And as this parameter increases without limit, GLVQ-F updates all nodes equally. We illustrate the failure of GLVQ and success of GLVQ-F with the IRIS data.Keywords
This publication has 12 references indexed in Scilit:
- Multipactor breakdown in waveguide irisesPublished by Institute of Electrical and Electronics Engineers (IEEE) ,2009
- Gradient based fuzzy c-means (GBFCM) algorithmPublished by Institute of Electrical and Electronics Engineers (IEEE) ,2002
- A fuzzy algorithm for learning vector quantizationPublished by Institute of Electrical and Electronics Engineers (IEEE) ,2002
- An analysis of the GLVQ algorithmIEEE Transactions on Neural Networks, 1995
- Fuzzy competitive learningNeural Networks, 1994
- Fuzzy Kohonen clustering networksPattern Recognition, 1994
- Generalized clustering networks and Kohonen's self-organizing schemeIEEE Transactions on Neural Networks, 1993
- SELF-ORGANIZING MAPS: OPHMIZATION APPROACHESPublished by Elsevier ,1991
- PARALLEL SELF-ORGANIZING FEATURE MAPS FOR UNSUPERVISED PATTERN RECOGNITIONInternational Journal of General Systems, 1990
- Pattern Recognition with Fuzzy Objective Function AlgorithmsPublished by Springer Nature ,1981