An introduction to numerical classification
著者
書誌事項
An introduction to numerical classification
Academic Press, 1975
大学図書館所蔵 全26件
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  奈良
  和歌山
  鳥取
  島根
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  広島
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  徳島
  香川
  愛媛
  高知
  福岡
  佐賀
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注記
Bibliography: p. 209-224
Includes index
内容説明・目次
内容説明
An Introduction to Numerical Classification describes the rationale of numerical analyses by means of geometrical models or worked examples without possible extensive algebraic symbolism. Organized into 13 chapters, the book covers both the taxonomic and ecological aspects of numerical classification. After briefly presenting different terminologies used in this work, the book examines several types of biological classification, including classification by structure, proximity, similarity, and difference. It then describes various ecological and taxonomic data manipulations, such as data reduction, transformation, and standardization. Other chapters deal with the criteria for best computer classification and the complexities and difficulties in this classification. These difficulties are illustrated by reference to studies of the ""bottom communities"" of benthic marine invertebrates, ranging across the entire field from the sampling program and nature of the data to problems over the type of computer used. The concluding chapters consider some of the measures of diversity and the interpretations which have been made from them, as well as the relationship of diversity to classification. The concept and application in biological classification of various multivariate analyses are also discussed in these texts. Supplemental texts on the information measures, partitioning, and interdependence of data diversity are also provided. This book is of value to biologists and researchers who are interested in basic biological numerical classification.
目次
Preface
1 Introduction
Text
2 Classification by Structure
A. Naming
B. The Higher Categories: Arbitrary Divisions
C. The Evolutionary Framework: "The New Systematics"
D. Models Showing Taxonomic Relationships
E. The Taxonomic Continuum
F. Critique of Classic Taxonomy
3 Classification by Proximity
A. Biogeographical Classification
B. Ecological Classification
4 General Comments on Classification
A. Continua in Nonbiological Situations
B. What Classification Involves
5 Numerical Approaches to Classification
A. Introduction
B. Types of Data
6 Measures of Similarity and Difference
A. General
B. Coefficients of Similarity
C. Coefficients of Association
D. Euclidean Distance as a Dissimilarity Measure
E. Information Theory Measures of Similarity/Dissimilarity
F. Probabilistic Measures
G. Further Properties of Similarity Measures
7 Reduction, Transformation, and Standardization of Data
A. General
B. Data Reduction
C. Data Transformation
D. Data Standardization
E. Reduction, Transformation, and Standardization of Taxonomic Data
F. Discussion of Data Manipulation
8 Similarity Matrices and their Analysis
A. Visual Matrices-Trellis Diagrams
B. Classificatory Strategies in General
C. Monothetic Divisive Hierarchical Clustering Methods
D. Agglomerative Polythetic Hierarchical Clustering Methods
E. Nonhierarchical Clustering, Clumping, Graphs, and Minimum Spanning Trees
9 The Handling and Interpretation of the Results of Computer Classifications
A. General Comparison and Interpretation of Results
B. Application of Significance Tests
C. Combination of Strategies
D. Dendrograms
10 Difficulties in Numerical Classification
A. Objectives in Classification
B. Choice of Data
C. Choice of Strategy
D. Presentation of Results
E. The Time Factor in Ecological Analyses: Multidimensional Data
F. Machine Dependency
11 Relationships of Species to Extrinsic Factors in Ecological Analyses
Text
12 Diversity and Classification
A. Measures Based on Numbers of Species
B. Measures Based on the Proportions of Species Present
C. Measures of Evenness or Equitability
D. Importance of Dominance in Diversity Measures
E. Interpretations of Diversity
F. Alpha, Beta, and Gamma Diversities
G. Habitat Width and Habitat Overlap
13 Multivariate Analysis
A. Introduction
B. Principal Component Analysis
C. Factor Analysis
D. Principal Coordinate Analysis
E. Canonical Variate Analyses
F. Canonical Correlation Analysis
G. Interpreting Ordinations
Appendix
A. Information Theory Measures of Diversity
B. Partitioning of Diversity of the Information Content of a Two-Way Table
C. Information Gain with Multistate Attributes
D. Information Measures and Interdependence
Bibliography
Subject Index
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