Multiple Classifier Systems (eBook, PDF)
6th International Workshop, MCS 2005, Seaside, CA, USA, June 13-15, 2005, Proceedings
Redaktion: Oza, Nikunj C.; Roli, Fabio; Kittler, Josef; Polikar, Robi
40,95 €
40,95 €
inkl. MwSt.
Sofort per Download lieferbar
20 °P sammeln
40,95 €
Als Download kaufen
40,95 €
inkl. MwSt.
Sofort per Download lieferbar
20 °P sammeln
Jetzt verschenken
Alle Infos zum eBook verschenken
40,95 €
inkl. MwSt.
Sofort per Download lieferbar
Alle Infos zum eBook verschenken
20 °P sammeln
Multiple Classifier Systems (eBook, PDF)
6th International Workshop, MCS 2005, Seaside, CA, USA, June 13-15, 2005, Proceedings
Redaktion: Oza, Nikunj C.; Roli, Fabio; Kittler, Josef; Polikar, Robi
- Format: PDF
- Merkliste
- Auf die Merkliste
- Bewerten Bewerten
- Teilen
- Produkt teilen
- Produkterinnerung
- Produkterinnerung
Bitte loggen Sie sich zunächst in Ihr Kundenkonto ein oder registrieren Sie sich bei
bücher.de, um das eBook-Abo tolino select nutzen zu können.
Hier können Sie sich einloggen
Hier können Sie sich einloggen
Sie sind bereits eingeloggt. Klicken Sie auf 2. tolino select Abo, um fortzufahren.
Bitte loggen Sie sich zunächst in Ihr Kundenkonto ein oder registrieren Sie sich bei bücher.de, um das eBook-Abo tolino select nutzen zu können.
- Geräte: PC
- ohne Kopierschutz
- eBook Hilfe
- Größe: 10.6MB
Andere Kunden interessierten sich auch für
- Multiple Classifier Systems (eBook, PDF)40,95 €
- Multiple Classifier Systems (eBook, PDF)40,95 €
- Multiple Classifier Systems (eBook, PDF)40,95 €
- Multiple Classifier Systems (eBook, PDF)40,95 €
- Learning Classifier Systems (eBook, PDF)40,95 €
- Pattern Recognition and Image Analysis (eBook, PDF)73,95 €
- Learning Classifier Systems (eBook, PDF)40,95 €
-
-
-
Produktdetails
- Verlag: Springer Berlin Heidelberg
- Seitenzahl: 432
- Erscheinungstermin: 2. Juni 2005
- Englisch
- ISBN-13: 9783540315780
- Artikelnr.: 44129082
Dieser Download kann aus rechtlichen Gründen nur mit Rechnungsadresse in A, B, BG, CY, CZ, D, DK, EW, E, FIN, F, GR, HR, H, IRL, I, LT, L, LR, M, NL, PL, P, R, S, SLO, SK ausgeliefert werden.
- Herstellerkennzeichnung Die Herstellerinformationen sind derzeit nicht verfügbar.
Nikunj C. Oza, NASA Ames Research Center, Moffett Field, CA, USA / Robi Polikar, Rowan University, Glassboro, NJ, USA / Josef Kittler, University of Surrey, Guildford, UK / Fabio Roli, University of Cagliari, Italy
Future Directions.
Semi
supervised Multiple Classifier Systems: Background and Research Directions.
Boosting.
Boosting GMM and Its Two Applications.
Boosting Soft
Margin SVM with Feature Selection for Pedestrian Detection.
Observations on Boosting Feature Selection.
Boosting Multiple Classifiers Constructed by Hybrid Discriminant Analysis.
Combination Methods.
Decoding Rules for Error Correcting Output Code Ensembles.
A Probability Model for Combining Ranks.
EER of Fixed and Trainable Fusion Classifiers: A Theoretical Study with Application to Biometric Authentication Tasks.
Mixture of Gaussian Processes for Combining Multiple Modalities.
Dynamic Classifier Integration Method.
Recursive ECOC for Microarray Data Classification.
Using Dempster
Shafer Theory in MCF Systems to Reject Samples.
Multiple Classifier Fusion Performance in Networked Stochastic Vector Quantisers.
On Deriving the Second
Stage Training Set for Trainable Combiners.
Using Independence Assumption to Improve Multimodal Biometric Fusion.
Design Methods.
Half
Against
Half Multi
class Support Vector Machines.
Combining Feature Subsets in Feature Selection.
ACE: Adaptive Classifiers
Ensemble System for Concept
Drifting Environments.
Using Decision Tree Models and Diversity Measures in the Selection of Ensemble Classification Models.
Ensembles of Classifiers from Spatially Disjoint Data.
Optimising Two
Stage Recognition Systems.
Design of Multiple Classifier Systems for Time Series Data.
Ensemble Learning with Biased Classifiers: The Triskel Algorithm.
Cluster
Based Cumulative Ensembles.
Ensemble of SVMs for Incremental Learning.
Performance Analysis.
Design of a New Classifier Simulator.
Evaluation of Diversity Measures for Binary Classifier Ensembles.
Which Is the Best Multiclass SVM Method? An Empirical Study.
Over
Fitting in Ensembles of Neural Network Classifiers Within ECOC Frameworks.
Between Two Extremes: Examining Decompositions of the Ensemble Objective Function.
Data Partitioning Evaluation Measures for Classifier Ensembles.
Dynamics of Variance Reduction in Bagging and Other Techniques Based on Randomisation.
Ensemble Confidence Estimates Posterior Probability.
Applications.
Using Domain Knowledge in the Random Subspace Method: Application to the Classification of Biomedical Spectra.
An Abnormal ECG Beat Detection Approach for Long
Term Monitoring of Heart Patients Based on Hybrid Kernel Machine Ensemble.
Speaker Verification Using Adapted User
Dependent Multilevel Fusion.
Multi
modal Person Recognition for Vehicular Applications.
Using an Ensemble of Classifiers to Audit a Production Classifier.
Analysis and Modelling of Diversity Contribution to Ensemble
Based Texture Recognition Performance.
Combining Audio
Based and Video
Based Shot Classification Systems for News Videos Segmentation.
Designing Multiple Classifier Systems for Face Recognition.
Exploiting Class Hierarchies for Knowledge Transfer in Hyperspectral Data.
Semi
supervised Multiple Classifier Systems: Background and Research Directions.
Boosting.
Boosting GMM and Its Two Applications.
Boosting Soft
Margin SVM with Feature Selection for Pedestrian Detection.
Observations on Boosting Feature Selection.
Boosting Multiple Classifiers Constructed by Hybrid Discriminant Analysis.
Combination Methods.
Decoding Rules for Error Correcting Output Code Ensembles.
A Probability Model for Combining Ranks.
EER of Fixed and Trainable Fusion Classifiers: A Theoretical Study with Application to Biometric Authentication Tasks.
Mixture of Gaussian Processes for Combining Multiple Modalities.
Dynamic Classifier Integration Method.
Recursive ECOC for Microarray Data Classification.
Using Dempster
Shafer Theory in MCF Systems to Reject Samples.
Multiple Classifier Fusion Performance in Networked Stochastic Vector Quantisers.
On Deriving the Second
Stage Training Set for Trainable Combiners.
Using Independence Assumption to Improve Multimodal Biometric Fusion.
Design Methods.
Half
Against
Half Multi
class Support Vector Machines.
Combining Feature Subsets in Feature Selection.
ACE: Adaptive Classifiers
Ensemble System for Concept
Drifting Environments.
Using Decision Tree Models and Diversity Measures in the Selection of Ensemble Classification Models.
Ensembles of Classifiers from Spatially Disjoint Data.
Optimising Two
Stage Recognition Systems.
Design of Multiple Classifier Systems for Time Series Data.
Ensemble Learning with Biased Classifiers: The Triskel Algorithm.
Cluster
Based Cumulative Ensembles.
Ensemble of SVMs for Incremental Learning.
Performance Analysis.
Design of a New Classifier Simulator.
Evaluation of Diversity Measures for Binary Classifier Ensembles.
Which Is the Best Multiclass SVM Method? An Empirical Study.
Over
Fitting in Ensembles of Neural Network Classifiers Within ECOC Frameworks.
Between Two Extremes: Examining Decompositions of the Ensemble Objective Function.
Data Partitioning Evaluation Measures for Classifier Ensembles.
Dynamics of Variance Reduction in Bagging and Other Techniques Based on Randomisation.
Ensemble Confidence Estimates Posterior Probability.
Applications.
Using Domain Knowledge in the Random Subspace Method: Application to the Classification of Biomedical Spectra.
An Abnormal ECG Beat Detection Approach for Long
Term Monitoring of Heart Patients Based on Hybrid Kernel Machine Ensemble.
Speaker Verification Using Adapted User
Dependent Multilevel Fusion.
Multi
modal Person Recognition for Vehicular Applications.
Using an Ensemble of Classifiers to Audit a Production Classifier.
Analysis and Modelling of Diversity Contribution to Ensemble
Based Texture Recognition Performance.
Combining Audio
Based and Video
Based Shot Classification Systems for News Videos Segmentation.
Designing Multiple Classifier Systems for Face Recognition.
Exploiting Class Hierarchies for Knowledge Transfer in Hyperspectral Data.
Future Directions.
Semi
supervised Multiple Classifier Systems: Background and Research Directions.
Boosting.
Boosting GMM and Its Two Applications.
Boosting Soft
Margin SVM with Feature Selection for Pedestrian Detection.
Observations on Boosting Feature Selection.
Boosting Multiple Classifiers Constructed by Hybrid Discriminant Analysis.
Combination Methods.
Decoding Rules for Error Correcting Output Code Ensembles.
A Probability Model for Combining Ranks.
EER of Fixed and Trainable Fusion Classifiers: A Theoretical Study with Application to Biometric Authentication Tasks.
Mixture of Gaussian Processes for Combining Multiple Modalities.
Dynamic Classifier Integration Method.
Recursive ECOC for Microarray Data Classification.
Using Dempster
Shafer Theory in MCF Systems to Reject Samples.
Multiple Classifier Fusion Performance in Networked Stochastic Vector Quantisers.
On Deriving the Second
Stage Training Set for Trainable Combiners.
Using Independence Assumption to Improve Multimodal Biometric Fusion.
Design Methods.
Half
Against
Half Multi
class Support Vector Machines.
Combining Feature Subsets in Feature Selection.
ACE: Adaptive Classifiers
Ensemble System for Concept
Drifting Environments.
Using Decision Tree Models and Diversity Measures in the Selection of Ensemble Classification Models.
Ensembles of Classifiers from Spatially Disjoint Data.
Optimising Two
Stage Recognition Systems.
Design of Multiple Classifier Systems for Time Series Data.
Ensemble Learning with Biased Classifiers: The Triskel Algorithm.
Cluster
Based Cumulative Ensembles.
Ensemble of SVMs for Incremental Learning.
Performance Analysis.
Design of a New Classifier Simulator.
Evaluation of Diversity Measures for Binary Classifier Ensembles.
Which Is the Best Multiclass SVM Method? An Empirical Study.
Over
Fitting in Ensembles of Neural Network Classifiers Within ECOC Frameworks.
Between Two Extremes: Examining Decompositions of the Ensemble Objective Function.
Data Partitioning Evaluation Measures for Classifier Ensembles.
Dynamics of Variance Reduction in Bagging and Other Techniques Based on Randomisation.
Ensemble Confidence Estimates Posterior Probability.
Applications.
Using Domain Knowledge in the Random Subspace Method: Application to the Classification of Biomedical Spectra.
An Abnormal ECG Beat Detection Approach for Long
Term Monitoring of Heart Patients Based on Hybrid Kernel Machine Ensemble.
Speaker Verification Using Adapted User
Dependent Multilevel Fusion.
Multi
modal Person Recognition for Vehicular Applications.
Using an Ensemble of Classifiers to Audit a Production Classifier.
Analysis and Modelling of Diversity Contribution to Ensemble
Based Texture Recognition Performance.
Combining Audio
Based and Video
Based Shot Classification Systems for News Videos Segmentation.
Designing Multiple Classifier Systems for Face Recognition.
Exploiting Class Hierarchies for Knowledge Transfer in Hyperspectral Data.
Semi
supervised Multiple Classifier Systems: Background and Research Directions.
Boosting.
Boosting GMM and Its Two Applications.
Boosting Soft
Margin SVM with Feature Selection for Pedestrian Detection.
Observations on Boosting Feature Selection.
Boosting Multiple Classifiers Constructed by Hybrid Discriminant Analysis.
Combination Methods.
Decoding Rules for Error Correcting Output Code Ensembles.
A Probability Model for Combining Ranks.
EER of Fixed and Trainable Fusion Classifiers: A Theoretical Study with Application to Biometric Authentication Tasks.
Mixture of Gaussian Processes for Combining Multiple Modalities.
Dynamic Classifier Integration Method.
Recursive ECOC for Microarray Data Classification.
Using Dempster
Shafer Theory in MCF Systems to Reject Samples.
Multiple Classifier Fusion Performance in Networked Stochastic Vector Quantisers.
On Deriving the Second
Stage Training Set for Trainable Combiners.
Using Independence Assumption to Improve Multimodal Biometric Fusion.
Design Methods.
Half
Against
Half Multi
class Support Vector Machines.
Combining Feature Subsets in Feature Selection.
ACE: Adaptive Classifiers
Ensemble System for Concept
Drifting Environments.
Using Decision Tree Models and Diversity Measures in the Selection of Ensemble Classification Models.
Ensembles of Classifiers from Spatially Disjoint Data.
Optimising Two
Stage Recognition Systems.
Design of Multiple Classifier Systems for Time Series Data.
Ensemble Learning with Biased Classifiers: The Triskel Algorithm.
Cluster
Based Cumulative Ensembles.
Ensemble of SVMs for Incremental Learning.
Performance Analysis.
Design of a New Classifier Simulator.
Evaluation of Diversity Measures for Binary Classifier Ensembles.
Which Is the Best Multiclass SVM Method? An Empirical Study.
Over
Fitting in Ensembles of Neural Network Classifiers Within ECOC Frameworks.
Between Two Extremes: Examining Decompositions of the Ensemble Objective Function.
Data Partitioning Evaluation Measures for Classifier Ensembles.
Dynamics of Variance Reduction in Bagging and Other Techniques Based on Randomisation.
Ensemble Confidence Estimates Posterior Probability.
Applications.
Using Domain Knowledge in the Random Subspace Method: Application to the Classification of Biomedical Spectra.
An Abnormal ECG Beat Detection Approach for Long
Term Monitoring of Heart Patients Based on Hybrid Kernel Machine Ensemble.
Speaker Verification Using Adapted User
Dependent Multilevel Fusion.
Multi
modal Person Recognition for Vehicular Applications.
Using an Ensemble of Classifiers to Audit a Production Classifier.
Analysis and Modelling of Diversity Contribution to Ensemble
Based Texture Recognition Performance.
Combining Audio
Based and Video
Based Shot Classification Systems for News Videos Segmentation.
Designing Multiple Classifier Systems for Face Recognition.
Exploiting Class Hierarchies for Knowledge Transfer in Hyperspectral Data.