Global Patent Index - EP 1222626 A2

EP 1222626 A2 20020717 - TOPOGRAPHIC MAP AND METHODS AND SYSTEMS FOR DATA PROCESSING THEREWITH

Title (en)

TOPOGRAPHIC MAP AND METHODS AND SYSTEMS FOR DATA PROCESSING THEREWITH

Title (de)

TOPOGRAPHISCHE KARTE UND VERFAHREN UND SYSTEME ZUR DATENVERARBEITUNG DAMIT

Title (fr)

CARTE TOPOGRAPHIQUE ET PROCEDES ET SYSTEMES DE TRAITEMENT DE DONNEES ASSOCIES

Publication

EP 1222626 A2 20020717 (EN)

Application

EP 00955981 A 20000830

Priority

  • BE 0000099 W 20000830
  • GB 0008985 A 20000413
  • GB 0015526 A 20000626
  • US 15194799 P 19990830

Abstract (en)

[origin: WO0116880A2] An unsupervised competitive learning rule for equiprobabilistic topographic map formation, called the kernel-based Maximum Entropy learning Rule (kMER) is described for execution by a neural network as well as systems, especially distributed processing systems for carrying out the rule. Since kMER adapts not only the neuron weights but also the radii of the kernels centered at these weights, and since these radii are updated so that they model the local input density at convergence, these radii can be used directly, in variable kernel density estimation. The data density function at any neuron is assumed to be convex and a cluster of related data comprises one or more neurons. The data density function may have a single radius, e.g. a hypersphere. A processing engine and a method for developing a kernel-based topographic map which is then used in data model-based applications are also described. The receptive field of each kernel is disjunct from the others, i.e. overlapping. The engine may include a tool for self-organising and unsupervised learning, a monitoring tool for maximising the degree of topology achieved, for example, by using the overlapping kernels, and a tool for automatically adjusting the kernel widths to achieve equiprobabilism. Applications include variable kernel density estimation with the equiprobabilistic topographic maps, with density based cluster maps and with equiprobabilistic variable kernel-based regression. The receptive fields of the kernels may be convex, e.g. hyperspheroids or hyperspheres.

IPC 1-7

G06N 3/00

IPC 8 full level

G06N 3/04 (2006.01); G06N 20/10 (2019.01)

CPC (source: EP US)

G06F 18/2137 (2023.01 - EP); G06F 18/2321 (2023.01 - EP); G06N 3/048 (2023.01 - EP); G06N 3/088 (2013.01 - EP); G06N 20/00 (2018.12 - EP US); G06N 20/10 (2018.12 - EP US)

Citation (search report)

See references of WO 0116880A2

Designated contracting state (EPC)

AT BE CH CY DE DK ES FI FR GB GR IE IT LI LU MC NL PT SE

DOCDB simple family (publication)

WO 0116880 A2 20010308; WO 0116880 A3 20020516; AU 6812200 A 20010326; EP 1222626 A2 20020717

DOCDB simple family (application)

BE 0000099 W 20000830; AU 6812200 A 20000830; EP 00955981 A 20000830