Preface |
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Part I. Clustering and Discrimination |
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3 | (2) |
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Some Thoughts about Classification |
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5 | (22) |
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Partial Defuzzification of Fuzzy Clusters |
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27 | (8) |
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A New Clustering Approach, Based on the Estimation of the Probability Density Function, for Gene Expression Data |
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35 | (8) |
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Two-mode Partitioning: Review of Methods and Application of Tabu Search |
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43 | (10) |
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Dynamical Clustering of Interval Data Optimization of an Adequacy Criterion Based on Hausdorff Distance |
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53 | (8) |
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Removing Separation Conditions in a 1 against 3-Components Gaussian Mixture Problem |
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61 | (14) |
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Obtaining Partitions of a Set of Hard or Fuzzy Partitions |
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75 | (6) |
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Clustering for Prototype Selection using Singular Value Decomposition |
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81 | (8) |
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Clustering in High-dimensional Data Spaces |
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89 | (8) |
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Quantization of Models: Local Approach and Asymptotically Optimal Partitions |
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97 | (10) |
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The Performance of an Autonomous Clustering Technique |
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107 | (6) |
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Cluster Analysis with Restricted Random Walks |
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113 | (8) |
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Missing Data in Hierarchical Classification of Variables -- a Simulation Study |
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121 | (10) |
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129 | (2) |
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Representation and Evaluation of Partitions |
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131 | (8) |
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Assessing the Number of Clusters of the Latent Class Model |
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139 | (8) |
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Validation of Very Large Data Sets Clustering by Means of a Nonparametric Linear Criterion |
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147 | (14) |
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159 | (2) |
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Effect of Feature Selection on Bagging Classifiers Based on Kernel Density Estimators |
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161 | (8) |
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Biplot Methodology for Discriminant Analysis Based upon Robust Methods and Principal Curves |
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169 | (8) |
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Bagging Combined Classifiers |
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177 | (8) |
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Application of Bayesian Decision Theory to Constrained Classification Networks |
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185 | (10) |
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Part II. Multivariate Data Analysis and Statistics |
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Multivariate Data Analysis |
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193 | (2) |
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Quotient Dissimilarities, Euclidean Embeddability, and Huygens' Weak Principle |
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195 | (8) |
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Conjoint Analysis and Stimulus Presentation -- a Comparison of Alternative Methods |
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203 | (8) |
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Grade Correspondence-cluster Analysis Applied to Separate Components of Reversely Regular Mixtures |
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211 | (8) |
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Obtaining Reducts with a Genetic Algorithm |
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219 | (8) |
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A Projection Algorithm for Regression with Collinearity |
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227 | (8) |
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Confronting Data Analysis with Constructivist Philosophy |
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235 | (12) |
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245 | (2) |
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Maximum Likelihood Clustering with Outliers |
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247 | (10) |
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An Improved Method for Estimating the Modes of the Probability Density Function and the Number of Classes for PDF-based Clustering |
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257 | (6) |
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Maximization of Measure of Allowable Sample Sizes Region in Stratified Sampling |
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263 | (8) |
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On Estimation of Population Averages on the Basis of Cluster Sample |
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271 | (10) |
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279 | (2) |
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Symbolic Regression Analysis |
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281 | (8) |
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Modelling Memory Requirement with Normal Symbolic Form |
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289 | (8) |
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Francisco de A. T. de Carvalho |
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Mixture Decomposition of Distributions by Copulas |
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297 | (14) |
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Determination of the Number of Clusters for Symbolic Objects Described by Interval Variables |
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311 | (8) |
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Symbolic Data Analysis Approach to Clustering Large Datasets |
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319 | (10) |
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Symbolic Class Descriptions |
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329 | (12) |
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Consensus Trees and Phylogenetics |
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339 | (2) |
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A Comparison of Alternative Methods for Detecting Reticulation Events in Phylogenetic Analysis |
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341 | (8) |
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Hierarchical Clustering of Multiple Decision Trees |
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349 | (10) |
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359 | (6) |
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A Family of Average Consensus Methods for Weighted Trees |
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365 | (6) |
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Comparison of Four methods for Inferring Additive Trees from Incomplete Dissimilarity Matrices |
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371 | (8) |
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Quartet Trees as a Tool to Reconstruct Large Trees from Sequences |
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379 | (12) |
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389 | (2) |
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Regression Trees for Longitudinal Data with Time-dependent Covariates |
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391 | (8) |
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Tree-based Models in Statistics: Three Decades of Research |
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399 | (10) |
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Computationally Efficient Linear Regression Trees |
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409 | (10) |
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Neural Networks and Genetic Algorithms |
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417 | (2) |
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A Clustering Based Procedure for Learning the Hidden Unit Parameters in Elliptical Basis Function Networks |
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419 | (8) |
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Multi-layer Perceptron on Interval Data |
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427 | (10) |
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Part III. Applications |
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Textual Analysis of Customer Statements for Quality Control and Help Desk Support |
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437 | (10) |
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AHP as S.upport for Strategy Decision Making in Banking |
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447 | (8) |
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Bioinformatics and Classification: The Analysis of Genome Expression Data |
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455 | (8) |
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Glaucoma Diagnosis by Indirect Classifiers |
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463 | (8) |
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A Cluster Analysis of the Importance of Country and Sector on Company Returns |
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471 | (8) |
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Problems of Classification in Investigative Psychology |
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479 | (10) |
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List of Reviewers |
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489 | (2) |
Index |
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491 | |