【圖書簡介】 This book constitutes the refereed proceedings of the Second International Workshop on Multiple Classifier Systems, MCS 2001, held in Cambridge, UK in July 2001.The 44 revised papers presented were carefully reviewed and selected for presentation. The book offers topical sections on bagging and boosting, MCS design methodology, ensemble classifiers, feature spaces for MCS, MCS in remote sensing, one class MCS and clustering, and combination strategies. Proceedings of the Second Intl Workshop on Multiple Classifier Systems, MCS 2001, held in Cambridge, UK, in July 2001. Softcover.
【本書目錄】 Bagging and Boosting Bagging and the Random Subspace Method for Redundant Feature Spaces Performance Degradation in Boosting A Generalized Class of Boosting Algorithms Based on Recursive Decoding Models Tuning Cost-Sensitive Boosting and Its Application to Melanoma Diagnosis Learning Classification RBF Networks by Boosting MCS Design Methodology Data Complexity Analysis for Classifier Combination Genetic Programming for Improved Receiver Operating Characteristics Methods for Designing Multiple Classifier Systems Decision-Level Fusion in Fingerprint Verification Genetic Algorithms for Multi-classifier System Configuration: A Case Study in Character Recognition Combined Classification of Handwritten Digits Using the 'Virtual Test Sample Method' . Averaging Weak Classifiers Mixing a Symbolic and a Subsymbolic Expert to Improve Carcinogenicity Prediction of Aromatic Compounds Ensemble Classifiers Multiple Classifier Systems Based on Interpretable Linear Classifiers Least Squares and Estimation Measures via Error Correcting Output Code Dependence among Codeword Bits Errors in ECOC Learning Machines An Experimental Analysis Information Analysis of Multiple Classifier Fusion Limiting the Number of Trees in Random Forests Learning-Data Selection Mechanism through Neural Networks Ensemble A Multi-SVM Classification System Automatic Classification of Clustered Microcalcifications by a Multiple Classifier System Feature Spaces for MCS Feature Weighted Ensemble Classifiers - A Modified Decision Scheme Feature Subsets for Classifier Combination: An Enumerative Experiment Input Decimation Ensembles: Decorrelating through Dimensionality Reduction Classifier Combination as a Tomographic Process MCS in Remote Sensing One Class MCS and Clustering Combination Strategies Author Index