Unsupervised Connectionist Clustering Algorithms for a better Supervised Prediction : Application to a radio communication problem - Inria - Institut national de recherche en sciences et technologies du numérique Access content directly
Conference Papers Year : 1999

Unsupervised Connectionist Clustering Algorithms for a better Supervised Prediction : Application to a radio communication problem

Laurent Bougrain
Frédéric Alexandre

Abstract

Most models concerned with real-world applications can be improved in structuring data and incorporating knowledge about the domain. In our problem of radio electrical wave dying down prediction for mobile communication, a geographic database can be divided in contextual subsets, each representing an homogeneous domain where a predictive model performs better. More precisely, by clustering the input space, a predictive model (here a multilayer perceptron) can be trained on each subspace. Various unsupervised algorithms for clustering were evaluated (Kohonen's maps. Desieno's algorithm, Neural gas, Growing Neural Gas, Buhmann's algorithm) to obtain class homogeneous enough to decrease the predictive error of the radio electrical wave prediction
Fichier principal
Vignette du fichier
99-R-177.pdf (238.34 Ko) Télécharger le fichier

Dates and versions

inria-00107693 , version 1 (19-10-2006)

Identifiers

  • HAL Id : inria-00107693 , version 1

Cite

Laurent Bougrain, Frédéric Alexandre. Unsupervised Connectionist Clustering Algorithms for a better Supervised Prediction : Application to a radio communication problem. International Joint Conference on Neural Networks, International Neural Networks Society, 1999, Washington, USA, 6 p. ⟨inria-00107693⟩
84 View
188 Download

Share

Gmail Facebook X LinkedIn More