Correspondence analysis in the Social Sciences : recent developments and applications
Author(s)
Bibliographic Information
Correspondence analysis in the Social Sciences : recent developments and applications
Academic Press, c1994
Available at 26 libraries
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  Iwate
  Miyagi
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  Toyama
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  Kyoto
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  Wakayama
  Tottori
  Shimane
  Okayama
  Hiroshima
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  Tokushima
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  Fukuoka
  Saga
  Nagasaki
  Kumamoto
  Oita
  Miyazaki
  Kagoshima
  Okinawa
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Note
Bibliography: p. [350]-366
Includes index
Description and Table of Contents
Description
Correspondence Analysis in the Social Sciences gives a comprehensive description of this method of data visualization as well as numerous applications to a wide range of social science data. Various theoretical aspects are presented in a language accessible to both social scientists and statisticians and a wide variety of applications are given which demonstrate the versatility of the method to interpret tabular data in a unique graphical way.
Table of Contents
General Introduction:
M. Greenacre, Correspondence Analysis and its Interpretation.
J. Blasius, Correspondence Analysis in Social Science Research.
J. Blasius and M. Greenacre, Computation of Correspondence Analysis.
P.G.M. van der Heijden, A. Mooijaart, and Y. Takane, Correspondence Analysis and Contingency Table Models.
U. Bickenholt and Y. Takane, Linear Constraints in Correspondence Analysis.
The BMS (K.M. van Meter, M.-A. Schiltz, P. Cibois, and L. Mounier), Correspondence Analysis: A History and French Sociological Perspective. Generalizations to Multivariate Data:
M. Greenacre, Multiple and Joint Correspondence Analysis.
L. Lebart, Complementary Use of Correspondence Analysis and Cluster Analysis.
W.J. Heiser and J.J. Meulman, Homogeneity Analysis: Exploring the Distribution of Variables and their Nonlinear Relationships.
J. Rovan, Visualizing Solutions in more than Two Dimensions.
Analysis of Longitudinal Data:
B. Martens, Analyzing Event History Data by Cluster Analysis and Multiple Correspondence Analysis: An example using data about work and occupations of scientists and engineers.
V. Thiessen, H. Rohlinger, and J. Blasius, The Significance of Minor Changes in Panel Data: A correspondence analysis of the division of household tasks.
T. Muller-Schneider, The Visualization of Structural Change by Means of Correspondence Analysis.
Further Applications of Correspondence Analysis in Social Science Research:
H. Giegler and H. Klein, Correspondence Analysis of Textual Data from Personal Advertisements.
U. Wuggenig and P. Mnich, Explorations in Social Spaces: Gender, Age, Class Fractions and Photographical Choices of Objects.
H.M.J.J. (Dirk) Snelders and M.J.W. Stokmans, Product Perception and Preference in Consumer Decision-making.
References.
Index.
by "Nielsen BookData"