An Ensemble Pruning Primer | p. 1 |
Introduction | p. 1 |
Background | p. 2 |
Producing the Models | p. 2 |
Combining the Models | p. 3 |
A Taxonomy of Ensemble Pruning Methods | p. 4 |
Ranking-Based Methods | p. 4 |
Clustering-Based Methods | p. 5 |
Optimization-Based Methods | p. 6 |
Genetic Algorithms | p. 6 |
Semi-definite Programming | p. 6 |
Hill Climbing | p. 7 |
Other Methods | p. 10 |
Statistical Procedures | p. 10 |
Reinforcement Learning | p. 10 |
Boosting | p. 11 |
Conclusions | p. 11 |
References | p. 12 |
Evade Hard Multiple Classifier Systems | p. 15 |
Introduction | p. 15 |
Related Work | p. 17 |
Previous Works on Multiple Classifiers for Security Applications | p. 17 |
A Theoretical Framework for Adversarial Classification Problems | p. 19 |
Are Multiple Classifier Systems Harder to Evade? | p. 21 |
Adding Features to a Classification System | p. 22 |
Splitting Features across an Ensemble of Classifiers | p. 24 |
A Case Study in Spam Filtering | p. 28 |
Adding Features to a Spam Filter | p. 29 |
Splitting the Features of a Spam Filter across an Ensemble of Classifiers | p. 32 |
Conclusions | p. 37 |
References | p. 37 |
A Personal Antispam System Based on a Behaviour-Knowledge Space Approach | p. 39 |
Introduction | p. 39 |
Related Work | p. 40 |
System Architecture | p. 42 |
Textual Features | p. 43 |
Semantic Features | p. 43 |
Syntactic Features | p. 46 |
Image Features | p. 47 |
Visual Features | p. 47 |
OCR-Based Features | p. 49 |
Combining Text-Based and Image-Based Classifiers | p. 50 |
Experimental Results | p. 52 |
Conclusion | p. 55 |
References | p. 56 |
Weighted Decoding ECOC for Facial Action Unit Classification | p. 59 |
Introduction | p. 59 |
Ensembles and Bootstrapping | p. 61 |
Error-Correcting Output Coding ECOC | p. 63 |
Motivation | p. 64 |
ECOC Algorithm and OOB Estimate | p. 65 |
Coding Strategies and Errors | p. 66 |
Weighted Decoding | p. 68 |
Dataset and Feature Extraction | p. 69 |
Experiments on Cohn-Kanade Database | p. 71 |
Discussion | p. 74 |
Conclusion | p. 75 |
References | p. 75 |
Prediction of Gene Function Using Ensembles of SVMs and Heterogeneous Data Sources | p. 79 |
Introduction | p. 79 |
Methods | p. 80 |
Linear Weighted Combination with Linear and Logarithmic Weights | p. 81 |
Decision Templates | p. 82 |
Experimental Setup | p. 83 |
Heterogeneous Biomolecular Datasets | p. 83 |
The Functional Catalogue (FunCat) | p. 85 |
Base Learners Tuning and Generation of Optimized Classifiers | p. 86 |
Results | p. 86 |
Discussion | p. 88 |
Conclusions | p. 89 |
References | p. 90 |
Partitioner Trees for Classification: A New Ensemble Method | p. 93 |
Introduction | p. 93 |
Partitioner Trees | p. 95 |
Algorithm | p. 95 |
Discussion | p. 99 |
Experiments | p. 104 |
Experimental Setup | p. 104 |
Results | p. 105 |
Conclusion | p. 111 |
References | p. 112 |
Disturbing Neighbors Diversity for Decision Forests | p. 113 |
Introduction | p. 113 |
Method | p. 115 |
Results | p. 119 |
Lesion Study | p. 124 |
Conclusion | p. 131 |
References | p. l32 |
Improving Supervised Learning with Multiple Clusterings | p. 135 |
Introduction | p. 135 |
Related Works | p. 136 |
Description of the Method | p. 138 |
Improving Supervised Classification with Clustering | p. 138 |
The Proposed Method | p. 140 |
Experiments | p. 142 |
Artificial Benchmark Evaluation | p. 142 |
Real Data Evaluation | p. 144 |
Conclusion | p. 148 |
References | p. 148 |
The Neighbors Voting Algorithm and Its Applications | p. 151 |
Introduction | p. 151 |
The Tensor Voting Framework | p. 152 |
The Neighbors Voting Algorithm | p. 155 |
Statistical Interpretation | p. 156 |
Applications of the Neighbors Voting Algorithm | p. 157 |
Point Clustering | p. 157 |
Classification | p. 158 |
Image Inpainting with NV | p. 160 |
Results | p. 161 |
Clustering Results | p. 161 |
Classification Results | p. 165 |
Inpainting Results | p. 170 |
Conclusions and Future Work | p. 170 |
References | p. 172 |
Clustering Ensembles with Active Constraints | p. 175 |
Introduction | p. 175 |
Related Work | p. 176 |
Locally Adaptive Clustering | p. 177 |
Selecting Informative Constraints | p. 179 |
Chunklet Graph | p. 181 |
Chunklet Assignment | p. 182 |
Constrained-Weighted Bipartite Partitioning Algorithm (C-WBPA) | p. 182 |
Empirical Evaluation | p. 185 |
Analysis of the Results | p. 188 |
Conclusions | p. 188 |
References | p. 189 |
Verifiable Ensembles of Low-Dimensional Submodels for Multi-class Problems with Imbalanced Misclassification Costs | p. 191 |
Introduction | p. 191 |
The Binary Ensemble Framework | p. 193 |
Decision Tree-Like Ensemble Model | p. 194 |
Non-Hierarchical Ensemble Model | p. 194 |
An Illustrative Example | p. 195 |
Multi-class Extensions of Binary Classifiers | p. 197 |
The Multi-class Ensemble Framework | p. 199 |
Ensemble of Multi-class Submodels | p. 199 |
Hierarchical Separate-and-Conquer Ensemble | p. 200 |
One-versus-Rest Ensemble | p. 201 |
An Illustrative Example (Cont'd) | p. 202 |
Experiments | p. 203 |
Binary Classification Problems | p. 205 |
Multi-class Classification Problems | p. 206 |
Comparison of the Ensemble Methods | p. 206 |
Comparison of Different Feature Selection Methods | p. 208 |
Conclusions | p. 210 |
References | p. 210 |
Independent Data Model Selection for Ensemble Dispersion Forecasting | p. 213 |
Introduction | p. 213 |
The æMedian ModelÆ Approach | p. 215 |
Negentropy-Based Hierarchical Agglomeration | p. 218 |
Kullback-Leibler Divergence | p. 218 |
Negentropy Information | p. 218 |
Agglomerative Approach | p. 219 |
Experimental Results | p. 219 |
Conclusions | p. 229 |
References | p. 229 |
Integrating Liknon Feature Selection and Committee Training | p. 233 |
Introduction | p. 233 |
Computational Paradigm and Parameters | p. 234 |
Liknon-Based Feature Selection | p. 235 |
Banana Example: Classification in Nonlinear Class Separation | p. 238 |
The Benchmark of NIPS2003 Feature Selection Challenge | p. 240 |
Perforinance, Size and Purity of the Feature Subsets in the Benchmark | p. 240 |
NN3 Committee and Liknon Feature Profiles in the Benchmark | p. 242 |
Conclusion | p. 248 |
References | p. 248 |
Evaluating Hybrid Ensembles for Intelligent Decision Support for Intensive Care | p. 251 |
Introduction | p. 251 |
Previous Work | p. 252 |
INTCare System | p. 254 |
Description of the Agents | p. 254 |
Problem Description | p. 256 |
Data Description | p. 257 |
Related Work | p. 257 |
Experimental Setting | p. 258 |
Results | p. 260 |
Discussion | p. 262 |
Conclusion | p. 263 |
References | p. 263 |
Index | p. 267 |
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