Repository logo
Acerca de Depósito
  • Español
  • English
Log In
  1. Home
  2. Productividad Cientifica
  3. Artículos
  4. Robustness analysis of the neural gas learning algorithm
 
  • Details

Robustness analysis of the neural gas learning algorithm

Journal
Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)
ISSN
0302-9743
Date Issued
2006-01-01
Author(s)
Saavedra, Carolina  
Moreno, Sebastián
Salas, Rodrigo
Allende , Héctor  
Centro Científico Tecnológico de Valparaíso CCTVAL USM  
DOI
10.1007/11892755_58
Abstract
The Neural Gas (NG) is a Vector Quantization technique where a set of prototypes self organize to represent the topology structure of the data. The learning algorithm of the Neural Gas consists in the estimation of the prototypes location in the feature space based in the stochastic gradient descent of an Energy function. In this paper we show that when deviations from idealized distribution function assumptions occur, the behavior of the Neural Gas model can be drastically affected and will not preserve the topology of the feature space as desired. In particular, we show that the learning algorithm of the NG is sensitive to the presence of outliers due to their influence over the adaptation step.

We incorporate a robust strategy to the learning algorithm based on M-estimators where the influence of outlying observations are bounded. Finally we make a comparative study of several estimators where we show the superior performance of our proposed method over the original NG, in static data clustering tasks on both synthetic and real data sets.
Subjects

Neural Gas

Robust Learning Algor...

M-estimators.

File(s)
Loading...
Thumbnail Image
Name

11892755_58.pdf

Size

275.11 KB

Format

Adobe PDF

Checksum

(MD5):cb5f9d7d1d62c42ad5b9285a0e3adad5

UNIVERSIDAD

  • Nuestra Historia
  • Federico Santa María
  • Definiciones Estratégicas
  • Modelo Educativo
  • Organización
  • Información Estadística USM

CAMPUS Y SEDES

  • Información Campus y Sedes
  • Tour Virtual

EXTENSIÓN Y CULTURA

  • Dirección General de Comunicaciones
  • Dirección General de Vinculación con el Medio
  • Oficina de Asuntos Internacionales
  • Red de Ex-Alumnos
  • Noticias USM
  • Eventos USM
  • Radio USM
  • Cultura USM

SERVICIOS

  • Aula USM
  • Biblioteca USM
  • Portal de Autoservicio Institucional
  • Dirección de Tecnologías de la Información
  • Portal de Reportes UDAI
  • Sistema de Información de Gestión Académica
  • Sistema Integrado de Información Argos ERP
  • Sistema de Remuneraciones Históricas
  • Directorio USM
  • Trabaja con nosotros
Acreditación USM
usm.cl
Logo Acceso
Logo Consejo de Rectores
Logo G9
Logo AUR
Logo CRUV
Logo REUNA
Logo Universia

Built with DSpace-CRIS software - Extension maintained and optimized by 4Science

  • Cookie settings
  • Privacy policy
  • End User Agreement
  • Send Feedback