多分类器系统 Multiple classifier systems
内容提要 :
This book constitutes the refereed proceedings of the Third International Workshop on Multiple Classifier Systems, MCS 2002, held in Cagliari, Italy, in June 2002.The 29 revised full papers presented together with three invited papers were carefully reviewed and selected for inclusion in the volume. The papers are organized in topical sections on bagging and boosting, ensemble learning and neural networks, design methodologies, combination strategies, analysis and performance evaluation, and applications.
编辑推荐 :
The LNCS series reports state-of-the-art results in computer science research, development, and education, at a high level and in both printed and electronic form. Enjoying tight cooperation with the R&D community, with numerous individuals, as well as with prestigious organizations and societies, LNCS has grown into the most comprehensive computer science resarch forum available.
The scope of LNCS, including its subseries LNAI, spans the whole range of computer science and information technology including interdisciplinary topics in a variety of application fields. The type of material publised traditionally includes. -proceedings(published in time for the respective conference) -post-proceedings(consisting of thoroughly revised final full papers) -research monographs(which may be basde on outstanding PhD work, research projects, technical reports, etc.) 目录 :
Invited Papers
Multiclassifier Systems: Back to the ~ture Support Vector Machines, Kernel Logistic Regression and Boosting Multiple Classification Systems in the Context of Feature Extraction and Selection Bagging and Boosting Boosted Tree Ensembles for Solving Multiclass Problems Distributed Pasting of Small Votes Bagging and Boosting for the Nearest Mean Classifier: Effects of Sample Size on Diversity and Accuracy Highlighting Hard Patterns via Adaboost Weights Evolution Using Diversity with Three Variants of Boosting: Aggressive, Conservative, and Inverse Ensemble Learning and Neural Networks Multistage Neural Network Ensembles Forward and Backward Selection in Regression Hybrid Network Types of Multinet System Discriminant Analysis and Factorial Multiple Splits in Recursive Partitioning for Data Mining Design Methodologies New Measure of Classifier Dependency in Multiple Classifier Systems A Discussion on the Classifier Projection Space for Classifier Combining On the General Application of the Tomographic Classifier Fusion Methodology Post-processing of Classifier Outputs in Multiple Classifier Systems Combination Strategies Trainable Multiple Classifier Schemes for Handwritten Character Recognition Generating Classifiers Ensembles from Multiple Prototypes and Its Application to Handwriting Recognition Adaptive Feature Spaces for Land Cover Classification with Limited Ground Truth Stacking with Multi-response Model Trees On Combining One-Class Classifiers for Image Database Retrieval Analysis and Performance Evaluation Bias-Variance Analysis and Ensembles of SVM An Experimental Comparison of Fixed and Trained Rules for Crisp Classifiers Outputs …… Applications Author Index |