ESANN 2000:
Bruges,
Belgium
ESANN 2000, 8th European Symposium on Artificial Neural Networks, Bruges, Belgium, April 26-28, 2000, Proceedings.
2000
Data and signal analysis
Support Vector Machines
Model selection and evaluation
Artificial neural networks and robotics
- Richard J. Duro, José Santos Reyes, José Antonio Becerra, Francisco Bellas, José Luis Crespo:
Using higher order synapses and nodes to improve sensing capabilities of mobile robots.
81-88
- Elsa Fernandez, Imanol Echave, Manuel Graña:
Competitive neural networks for robust computation of the optical flow.
89-94
- Francesco Panerai, Giorgio Metta, Giulio Sandini:
Learning VOR-like stabilization reflexes in robots.
95-102
- Roberto Iglesias, Manuel Fernández Delgado, Senén Barro:
Learning of perceptual states in the design of an adaptive wall-following behavior.
103-108
ANN models and learning I
- Wen-Jyi Hwang, Chien-Min Ou, Shi-Chiang Liao, Ching-Fung Chine:
Fuzzy entropy-constrained competitive learning algorithm.
109-116
- Gianluigi Rech:
Specification, estimation and evaluation of single hidden-layer feedforward autoregressive artificial neural network models.
117-122
- Lu Wei, Jagath C. Rajapakse:
A neural network for undercomplete independent component analysis.
123-128
- Aleksandar Lazarevic, Dragoljub Pokrajac, Zoran Obradovic:
Distributed clustering and local regression for knowledge discovery in multiple spatial databases.
129-134
- Frank Heister, Gregor Schock:
Nonlinear, statistical data-analysis for the optimal construction of neural-network inputs with the concept of a mutual information.
439-444
- Mercedes Fernández-Redondo, Carlos Hernández-Espinosa:
Influence of weight-decay training in input selection methods.
135-140
- Peter J. Edwards, Alan F. Murray:
Committee formation for reliable and accurate neural prediction in industry.
141-146
Non-linear dynamics and control
- Toru Ohira:
Toward encryption with neural network analogy.
147-152
- Ping Jiang, Rolf Unbehauen:
Iterative learning neural network control for nonlinear system trajectory tracking.
153-158
- Piero A. Gili, Manuela Battipede:
A comparative design of a MIMO neural adaptive rate damping for a nonlinear helicopter model.
159-164
Neural networks in medicine
- Thomas Villmann:
Neural networks approaches in medicine - a review of actual developments.
165-176
- Tim W. Nattkemper, Heiko Wersing, Walter Schubert, Helge Ritter:
A neural network architecture for automatic segmentation of fluorescence micrographs.
177-182
- Guojun Bao, Jagath C. Rajapakse:
Boundary based movement correction of functional MR data using a genetic algorithm.
183-188
- Axel Wismüller, Frank Vietze, Dominik R. Dersch, Klaus Hahn, Helge Ritter:
A neural network approach to adaptive pattern analysis - the deformable feature map.
189-194
- Armando Bazzani, Alessandro Bevilacqua, Dante Bollini, Rosa Brancaccio, Renato Campanini, Nico Lanconelli, Alessandro Riccardi, Davide Romani, Gianluca Zamboni:
Automatic detection of clustered microcalcifications in digital mammograms using an SVM classifier.
195-200
- Rüdiger W. Brause, F. Friedrich:
A neuro-fuzzy approach as medical diagnostic interface.
201-206
ANN models and learning II
- John A. Bullinaria, Patricia M. Riddell:
Regularization in oculomotor control.
207-212
- Barbara Hammer:
Limitations of hybrid systems.
213-218
- Elio D. Di Claudio, Raffaele Parisi, Gianni Orlandi:
Discriminative learning for neural decision feedback equalizers.
219-226
- M. A. Torres, M. E. Pardo, J. M. Pupo, Luciano Boquete, Rafael Barea, Luis Miguel Bergasa:
Neurocontrol of a binary distillation column.
227-232
- Rafael Barea, Luciano Boquete, Manuel Mazo, Elena López Guillén, Luis Miguel Bergasa:
E.O.G. guidance of a weelchair using spiking neural networks.
233-238
Self-organizing maps for data analysis
Recurrent networks
Time series prediction
- Johan A. K. Suykens, Joos Vandewalle:
The K.U.Leuven competition data: a challenge for advanced neural network techniques.
299-304
- James McNames:
Local model optimization for time series prediction.
305-310
- Gianluca Bontempi, Mauro Birattari:
A multi-steap ahead prediction method based on local dynamic properties.
311-316
- Ulrich Parlitz, Christian Merkwirth:
Nonlinear prediction of spatio-temporal time series.
317-322
- Maurits D. Out, Walter A. Kosters:
A Bayesian approach to combined neural networks forecasting.
323-328
- Amaury Lendasse, John Aldo Lee, Vincent Wertz, Michel Verleysen:
Time series forecasting using CCA and Kohonen maps - application to electricity consumption.
329-334
- Anna Lombardi, Antonio Vicino:
Financial predictions based on bootstrap-neural networks.
335-340
- Skander Soltani:
On the use of the wavelet decomposition for time series prediction.
341-346
- Luis Monzón Benítez, Ademar Ferreira, Diana I. Pedreira Iparraguirre:
Chaotic time series prediction using the Kohonen algorithm.
347-352
- Patrick Rousset:
Curve forecast with the SOM algorithm: using a tool to follow the time on a Kohonen map.
353-358
ANN models and learning III
Artificial neural networks for energy management systems
Learning in biological and artificial systems
Copyright © Mon Nov 2 20:34:35 2009
by Michael Ley (ley@uni-trier.de)