


default search action
8. MCS 2009: Reykjavik, Iceland
- Jón Atli Benediktsson, Josef Kittler, Fabio Roli:

Multiple Classifier Systems, 8th International Workshop, MCS 2009, Reykjavik, Iceland, June 10-12, 2009. Proceedings. Lecture Notes in Computer Science 5519, Springer 2009, ISBN 978-3-642-02325-5
ECOC, Boosting and Bagging
- Raymond S. Smith, Terry Windeatt

:
The Bias Variance Trade-Off in Bootstrapped Error Correcting Output Code Ensembles. 1-10 - Sergio Escalera

, Oriol Pujol
, Petia Radeva
:
Recoding Error-Correcting Output Codes. 11-21 - Satoshi Shirai, Mineichi Kudo

, Atsuyoshi Nakamura
:
Comparison of Bagging and Boosting Algorithms on Sample and Feature Weighting. 22-31 - Goo Jun

, Joydeep Ghosh:
Multi-class Boosting with Class Hierarchies. 32-41 - Goo Jun

, Joydeep Ghosh:
Hybrid Hierarchical Classifiers for Hyperspectral Data Analysis. 42-51
MCS in Remote Sensing
- Peijun Du

, Wei Zhang, Hao Sun:
Multiple Classifier Combination for Hyperspectral Remote Sensing Image Classification. 52-61 - Xavier Ceamanos, Björn Waske

, Jón Atli Benediktsson
, Jocelyn Chanussot, Johannes R. Sveinsson
:
Ensemble Strategies for Classifying Hyperspectral Remote Sensing Data. 62-71
Unbalanced Data and Decision Templates
- David M. J. Tax, Marco Loog, Robert P. W. Duin:

Optimal Mean-Precision Classifier. 72-81 - Muhammad Atif Tahir

, Josef Kittler, Krystian Mikolajczyk, Fei Yan:
A Multiple Expert Approach to the Class Imbalance Problem Using Inverse Random under Sampling. 82-91 - Mohamed Farouk Abdel Hady, Friedhelm Schwenker:

Decision Templates Based RBF Network for Tree-Structured Multiple Classifier Fusion. 92-101
Stacked Generalization and Active Learning
- Narayanan Unny Edakunni

, Sethu Vijayakumar:
Efficient Online Classification Using an Ensemble of Bayesian Linear Logistic Regressors. 102-111 - Samuel Robert Reid, Gregory Z. Grudic:

Regularized Linear Models in Stacked Generalization. 112-121 - Davy Sannen, Hendrik Van Brussel:

Active Grading Ensembles for Learning Visual Quality Control from Multiple Humans. 122-131 - Battista Biggio

, Giorgio Fumera
, Fabio Roli
:
Multiple Classifier Systems for Adversarial Classification Tasks. 132-141
Concept Drift, Missing Values and Random Forest
- Ryan Elwell, Robi Polikar

:
Incremental Learning of Variable Rate Concept Drift. 142-151 - Luca Didaci

, Gian Luca Marcialis, Fabio Roli:
Semi-supervised Co-update of Multiple Matchers. 152-160 - David Windridge

, Norman Poh, Vadim Mottl, Alexander Tatarchuk, Andrey Eliseyev
:
Handling Multimodal Information Fusion with Missing Observations Using the Neutral Point Substitution Method. 161-170 - Simon Bernard

, Laurent Heutte, Sébastien Adam:
Influence of Hyperparameters on Random Forest Accuracy. 171-180
SVM Ensembles
- Albert D. Shieh, David F. Kamm:

Ensembles of One Class Support Vector Machines. 181-190 - Jesús Maudes

, Juan José Rodríguez
, César Ignacio García-Osorio
:
Disturbing Neighbors Ensembles for Linear SVM. 191-200
Fusion of Graphs, Concepts and Categorical Data
- Wan-Jui Lee, Robert P. W. Duin:

A Labelled Graph Based Multiple Classifier System. 201-210 - Kaspar Riesen

, Horst Bunke:
Cluster Ensembles Based on Vector Space Embeddings of Graphs. 211-221 - Amir Ahmad, Gavin Brown:

Random Ordinality Ensembles A Novel Ensemble Method for Multi-valued Categorical Data. 222-231 - Giorgio Valentini

:
True Path Rule Hierarchical Ensembles. 232-241
Clustering
- Manuela Zanda, Gavin Brown:

A Study of Semi-supervised Generative Ensembles. 242-251 - Mingmin Chi, Youdong Miao, Youze Tang, Jón Atli Benediktsson

, Xuanjing Huang
:
Hierarchical Ensemble Support Cluster Machine. 252-261 - Oriol Pujol

, Eloi Puertas
, Carlo Gatta:
Multi-scale Stacked Sequential Learning. 262-271 - Michal Haindl

, Stanislav Mikes, Pavel Pudil
:
Unsupervised Hierarchical Weighted Multi-segmenter. 272-282 - Yuhua Gu, Lawrence O. Hall, Dmitry B. Goldgof:

Ant Clustering Using Ensembles of Partitions. 283-292
Classifier and Feature Selection
- Nan Li, Zhi-Hua Zhou:

Selective Ensemble under Regularization Framework. 293-303 - Petr Somol, Jirí Grim, Pavel Pudil

:
Criteria Ensembles in Feature Selection. 304-313 - Francesco Gargiulo

, Ludmila I. Kuncheva
, Carlo Sansone
:
Network Protocol Verification by a Classifier Selection Ensemble. 314-323 - Alexander Tatarchuk, Valentina Sulimova, David Windridge

, Vadim Mottl, Mikhail Lange:
Supervised Selective Combining Pattern Recognition Modalities and Its Application to Signature Verification by Fusing On-Line and Off-Line Kernels. 324-334
Theory of MCS
- Matthew Prior, Terry Windeatt:

Improved Uniformity Enforcement in Stochastic Discrimination. 335-343 - Gavin Brown:

An Information Theoretic Perspective on Multiple Classifier Systems. 344-353 - Amber Tomas:

Constraints in Weighted Averaging. 354-363 - Kai Ming Ting, Jonathan R. Wells, Swee Chuan Tan, Shyh Wei Teng

, Geoffrey I. Webb
:
FaSS: Ensembles for Stable Learners. 364-374
MCS Methods and Applications
- Björn Waske

, Jón Atli Benediktsson
, Johannes R. Sveinsson
:
Classifying Remote Sensing Data with Support Vector Machines and Imbalanced Training Data. 375-384 - Michael J. Procopio, W. Philip Kegelmeyer, Gregory Z. Grudic, Jane Mulligan:

Terrain Segmentation with On-Line Mixtures of Experts for Autonomous Robot Navigation. 385-397 - Peijun Du

, Guangli Li, Wei Zhang, Xiaomei Wang, Hao Sun:
Consistency Measure of Multiple Classifiers for Land Cover Classification by Remote Sensing Image. 398-407 - Peijun Du

, Hao Sun, Wei Zhang:
Target Identification from High Resolution Remote Sensing Image by Combining Multiple Classifiers. 408-417 - Sergey Tulyakov, Venu Govindaraju

:
Neural Network Optimization for Combinations in Identification Systems. 418-427 - Waleed M. Azmy, Neamat El Gayar

, Amir F. Atiya
, Hisham El-Shishiny:
MLP, Gaussian Processes and Negative Correlation Learning for Time Series Prediction. 428-437 - Ingrid Visentini, Josef Kittler, Gian Luca Foresti:

Diversity-Based Classifier Selection for Adaptive Object Tracking. 438-447 - Matteo Re

, Giorgio Valentini
:
Ensemble Based Data Fusion for Gene Function Prediction. 448-457 - Jian-Wu Xu, Vartika Singh, Venu Govindaraju

, Depankar Neogi:
A Cascade Multiple Classifier System for Document Categorization. 458-467 - Marco Loog, Yan Li, David M. J. Tax:

Maximum Membership Scale Selection. 468-477 - Chunxia Zhang, Robert P. W. Duin:

An Empirical Study of a Linear Regression Combiner on Multi-class Data Sets. 478-487 - Amir Ahmad, Gavin Brown:

A Study of Random Linear Oracle Ensembles. 488-497 - Kai Lienemann, Thomas Plötz, Gernot A. Fink

:
Stacking for Ensembles of Local Experts in Metabonomic Applications. 498-508 - Kai Ming Ting, Lian Zhu:

Boosting Support Vector Machines Successfully. 509-518
Invited Papers
- Melba M. Crawford, Wonkook Kim:

Manifold Learning for Multi-classifier Systems via Ensembles. 519-528 - Zhi-Hua Zhou:

When Semi-supervised Learning Meets Ensemble Learning. 529-538

manage site settings
To protect your privacy, all features that rely on external API calls from your browser are turned off by default. You need to opt-in for them to become active. All settings here will be stored as cookies with your web browser. For more information see our F.A.Q.


Google
Google Scholar
Semantic Scholar
Internet Archive Scholar
CiteSeerX
ORCID














