Multiple classifier systems : 8th international workshop, MCS 2009, Reykjavik, Iceland, June 10-12, 2009. proceedings

書誌事項

Multiple classifier systems : 8th international workshop, MCS 2009, Reykjavik, Iceland, June 10-12, 2009. proceedings

Jón Atli Benediktsson, Josef Kittler, Fabio Roli (eds.)

(Lecture notes in computer science, 5519)

Springer, c2009

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注記

Includes bibliographical references and index

内容説明・目次

内容説明

These proceedings are a record of the Multiple Classi?er Systems Workshop, MCS 2009, held at the University of Iceland, Reykjavik, Iceland in June 2009. Being the eighth in a well-established series of meetings providing an inter- tional forum for the discussion of issues in multiple classi?er system design, the workshop achieved its objective of bringing together researchers from diverse communities (neural networks,pattern recognition,machine learning and stat- tics) concerned with this research topic. From more than 70 submissions, the Program Committee selected 54 papers to create an interesting scienti?c program. The special focus of MCS 2009 was on the application of multiple classi?er systems in remote sensing. This part- ular application uses multiple classi?ers for raw data fusion, feature level fusion and decision level fusion. In addition to the excellent regular submission in the technical program, outstanding contributions were made by invited speakers Melba Crawford from Purdue University and Zhi-Hua Zhou of Nanjing Univ- sity. Papers of these talks are included in these workshop proceedings. With the workshop'sapplicationfocusbeingonremotesensing,Prof.Crawford'sexpertise in the use of multiple classi?cation systems in this context made the discussions on this topic at MCS 2009 particularly fruitful.

目次

ECOC, Boosting and Bagging.- The Bias Variance Trade-Off in Bootstrapped Error Correcting Output Code Ensembles.- Recoding Error-Correcting Output Codes.- Comparison of Bagging and Boosting Algorithms on Sample and Feature Weighting.- Multi-class Boosting with Class Hierarchies.- MCS in Remote Sensing.- Hybrid Hierarchical Classifiers for Hyperspectral Data Analysis.- Multiple Classifier Combination for Hyperspectral Remote Sensing Image Classification.- Ensemble Strategies for Classifying Hyperspectral Remote Sensing Data.- Unbalanced Data and Decision Templates.- Optimal Mean-Precision Classifier.- A Multiple Expert Approach to the Class Imbalance Problem Using Inverse Random under Sampling.- Decision Templates Based RBF Network for Tree-Structured Multiple Classifier Fusion.- Stacked Generalization and Active Learning.- Efficient Online Classification Using an Ensemble of Bayesian Linear Logistic Regressors.- Regularized Linear Models in Stacked Generalization.- Active Grading Ensembles for Learning Visual Quality Control from Multiple Humans.- Multiple Classifier Systems for Adversarial Classification Tasks.- Concept Drift, Missing Values and Random Forest.- Incremental Learning of Variable Rate Concept Drift.- Semi-supervised Co-update of Multiple Matchers.- Handling Multimodal Information Fusion with Missing Observations Using the Neutral Point Substitution Method.- Influence of Hyperparameters on Random Forest Accuracy.- SVM Ensembles.- Ensembles of One Class Support Vector Machines.- Disturbing Neighbors Ensembles for Linear SVM.- Fusion of Graphs, Concepts and Categorical Data.- A Labelled Graph Based Multiple Classifier System.- Cluster Ensembles Based on Vector Space Embeddings of Graphs.- Random Ordinality Ensembles A Novel Ensemble Method for Multi-valued Categorical Data.- True Path Rule Hierarchical Ensembles.- Clustering.- A Study of Semi-supervised Generative Ensembles.- Hierarchical Ensemble Support Cluster Machine.- Multi-scale Stacked Sequential Learning.- Unsupervised Hierarchical Weighted Multi-segmenter.- Ant Clustering Using Ensembles of Partitions.- Classifier and Feature Selection.- Selective Ensemble under Regularization Framework.- Criteria Ensembles in Feature Selection.- Network Protocol Verification by a Classifier Selection Ensemble.- Supervised Selective Combining Pattern Recognition Modalities and Its Application to Signature Verification by Fusing On-Line and Off-Line Kernels.- Theory of MCS.- Improved Uniformity Enforcement in Stochastic Discrimination.- An Information Theoretic Perspective on Multiple Classifier Systems.- Constraints in Weighted Averaging.- FaSS: Ensembles for Stable Learners.- MCS Methods and Applications.- Classifying Remote Sensing Data with Support Vector Machines and Imbalanced Training Data.- Terrain Segmentation with On-Line Mixtures of Experts for Autonomous Robot Navigation.- Consistency Measure of Multiple Classifiers for Land Cover Classification by Remote Sensing Image.- Target Identification from High Resolution Remote Sensing Image by Combining Multiple Classifiers.- Neural Network Optimization for Combinations in Identification Systems.- MLP, Gaussian Processes and Negative Correlation Learning for Time Series Prediction.- Diversity-Based Classifier Selection for Adaptive Object Tracking.- Ensemble Based Data Fusion for Gene Function Prediction.- A Cascade Multiple Classifier System for Document Categorization.- Maximum Membership Scale Selection.- An Empirical Study of a Linear Regression Combiner on Multi-class Data Sets.- A Study of Random Linear Oracle Ensembles.- Stacking for Ensembles of Local Experts in Metabonomic Applications.- Boosting Support Vector Machines Successfully.- Invited Papers.- Manifold Learning for Multi-classifier Systems via Ensembles.- When Semi-supervised Learning Meets Ensemble Learning.

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詳細情報

  • NII書誌ID(NCID)
    BB31275401
  • ISBN
    • 9783642023255
  • LCCN
    2009930102
  • 出版国コード
    us
  • タイトル言語コード
    eng
  • 本文言語コード
    eng
  • 出版地
    Berlin
  • ページ数/冊数
    xi, 540 p.
  • 大きさ
    24 cm
  • 親書誌ID
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