<p>Lognormal distributions are one of the most commonly studied models in the staΒ tistical literature while being most frequently used in the applied literature. The lognormal distributions have been used in problems arising from such diverse fields as hydrology, biology, communication engineering,
Statistical Tables for Multivariate Analysis: A Handbook with References to Applications
β Scribed by Heinz Kres (auth.)
- Publisher
- Springer-Verlag New York
- Year
- 1983
- Tongue
- English
- Leaves
- 522
- Series
- Springer Series in Statistics
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Table of Contents
Front Matter....Pages i-xxii
Front Matter....Pages 1-1
A Brief Summary of the Test Criteria for the Multivariate General Linear Hypothesis....Pages 2-13
The Likelihood Ratio Criterion Ξ of S. S. Wilks: Tables of F. J. Wall....Pages 14-51
The Ξ max -Criterion of K. C. S. Pillai: A Version of the Maximum Root Criterion of S. N. Roy....Pages 52-61
The Generalized F-Criterion of R. D. Bock: A Version of the Maximal Root Criterion of S. N. Roy....Pages 62-86
The Nomograms of D. L. Heck for the Distribution of the Ξ max -Criterion of S. N. Roy....Pages 87-104
The Ξ max -Criterion of F. G. Foster and D. H. Rees: A Version of the Maximum Root Criterion of S. N. Roy....Pages 105-117
The Trace Criterion of H. Hotelling and D. N. Lawley in the Version V (s) of K. C. S. Pillai....Pages 118-135
The T 2 -Criterion of H. Hotelling: Tables of D. R. Jensen and R. B. Howe....Pages 136-153
Front Matter....Pages 154-181
The Multivariate Normal Distribution with Equal Correlations: Tables of S. S. Gupta....Pages 183-183
The Distribution of the Maximum of N Equally Correlated Normal Standardised Random Variables: Tables of S. S. Gupta, K. Nagel, and S. Panchapakesan....Pages 184-203
The Sphericity Test of J. W. Mauchly: Tables of B. N. Nagarsenker and K. C. S. Pillai....Pages 204-211
The Test Criteria L mvc , L vc , and L m of S. S. Wilks: Tables of S. S. Wilks and also of J. Roy and V. K. Murthy....Pages 212-224
The Multivariate Outlier Criteria of S. S. Wilks....Pages 225-234
Multivariate Tolerance Regions with Ξ² -Expectation (Type 2): Tables of D. A. S. Fraser and I. Guttman....Pages 235-247
Multivariate Tolerance Regions with Ξ² -Content (Type 1): Tables of V. Chew....Pages 248-257
Testing a Single Covariance Matrix: Tables of B. P. Korin....Pages 258-262
Testing the Equality of k Covariance Matrices: Tables of B. P. Korin....Pages 263-267
Distribution of the Extreme Roots of a Wishart Matrix: Tables of R. Ch. Hanumara and W. A. Thompson....Pages 268-273
The Multivariate t-Distribution: Tables of P. R. Krishnaiah and J. V. Armitage....Pages 274-280
Front Matter....Pages 281-303
The Gamma Distribution: Tables of M. B. Wilk, R. Gnanadesikan, and M. J. Huyette....Pages 305-305
The Bargmann Test for Simple Structure of a Factor Pattern: Tables of R. Bargmann....Pages 306-313
Upper Percentage Points of the Bonferroni Chi-Square Statistic: Tables of G. B. Beus and D. R. Jensen....Pages 314-328
Lower Percentage Points of the Bonferroni Chi-Square Statistic: Tables of G. B. Beus and D. R. Jensen....Pages 329-357
The Sequential Chi-square Criterion for Multivariate Comparisons of Means: Tables of R. J. Freund and J. E. Jackson....Pages 358-380
The Sequential T 2 -Criterion for Multivariate Testing for Means: Tables of R. J. Freund and J. E. Jackson....Pages 381-393
Front Matter....Pages 394-417
The Mardia-Test for Multivariate Normality, Skewness, and Kurtosis: Tables by K. V. Mardia....Pages 419-419
Sample Size Requirements for the T 2 -Test of Manova in One-way Classifications: Tables of J. LΓ€uter....Pages 420-431
Critical Values for Simultaneous and Sequential Bonferroni z-Tests: Tables of G. A. Lienert, O. Ludwig, and K. Rockenfeller....Pages 432-451
Upper Percentage Points of the Bonferroni t-Statistic: Tables of B. J. R. Bailey....Pages 452-466
Upper Percentage Points of Statistics for Testing Covariance Matrices: Tables of J. C. Lee, T. C. Chang, and P. R. Krishnaiah....Pages 467-477
Back Matter....Pages 478-502
....Pages 503-504
β¦ Subjects
Statistics, general
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