
Artificial Neural Networks in Pattern Recognition
by Prevost, Lionel; Marinai, Simone; Schwenker, Friedhelm-
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Summary
Table of Contents
Unsupervised Learning | |
Patch Relational Neural Gas - Clustering of Huge Dissimilarity Datasets | p. 1 |
The Block Generative Topographic Mapping | p. 13 |
Kernel k-Means Clustering Applied to Vector Space Embeddings of Graphs | p. 24 |
Probabilistic Models Based on the [Pi]-Sigmoid Distribution | p. 36 |
How Robust Is a Probabilistic Neural VLSI System Against Environmental Noise | p. 44 |
Supervised Learning | |
Sparse Least Squares Support Vector Machines by Forward Selection Based on Linear Discriminant Analysis | p. 54 |
Supervised Incremental Learning with the Fuzzy ARTMAP Neural Network | p. 66 |
Discriminatory Data Mapping by Matrix-Based Supervised Learning Metrics | p. 78 |
Neural Approximation of Monte Carlo Policy Evaluation Deployed in Connect Four | p. 90 |
Cyclostationary Neural Networks for Air Pollutant Concentration Prediction | p. 101 |
Fuzzy Evolutionary Probabilistic Neural Networks | p. 113 |
Experiments with Supervised Fuzzy LVQ | p. 125 |
A Neural Network Approach to Similarity Learning | p. 133 |
Partial Discriminative Training of Neural Networks for Classification of Overlapping Classes | p. 137 |
Multiple Classifiers | |
Boosting Threshold Classifiers for High-Dimensional Data in Functional Genomics | p. 147 |
Decision Fusion on Boosting Ensembles | p. 157 |
The Mixture of Neural Networks as Ensemble Combiner | p. 168 |
Combining Methods for Dynamic Multiple Classifier Systems | p. 180 |
Researching on Multi-net Systems Based on Stacked Generalization | p. 193 |
Applications | |
Real-Time Emotion Recognition from Speech Using Echo State Networks | p. 205 |
Sentence Understanding and Learning of New Words with Large-Scale Neural Networks | p. 217 |
Multi-class Vehicle Type Recognition System | p. 228 |
A Bio-inspired Neural Model for Colour Image Segmentation | p. 240 |
Mining Software Aging Patterns by Artificial Neural Networks | p. 252 |
Bayesian Classifiers for Predicting the Outcome of Breast Cancer Preoperative Chemotherapy | p. 263 |
Feature Selection | |
Feature Ranking Ensembles for Facial Action Unit Classification | p. 267 |
Texture Classification with Generalized Fourier Descriptors in Dimensionality Reduction Context: An Overview Exploration | p. 280 |
Improving Features Subset Selection Using Genetic Algorithms for Iris Recognition | p. 292 |
Artificial Neural Network Based Automatic Face Model Generation System from Only One Fingerprint | p. 305 |
Author Index | p. 317 |
Table of Contents provided by Ingram. All Rights Reserved. |
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