Multivariate Analysis: Methods and ApplicationsStructural Sensitivity in Econometric Models Edwin Kuh, John W. Neese and Peter Hollinger Provides a pathbreaking assessment of the worth of linear dynamic systems methods for probing the behavior of complex macroeconomic models. Representing a major improvement upon the standard "black box" approach to analyzing economic model structure, it introduces the powerful concept of parameter sensitivity analysis within a linear systems root/vector framework. The approach is illustrated with a good mediumsize econometric model (Michigan Quarterly Econometric Model of the United States). EISPACK, the Fortran code for computing characteristic roots and vectors has been upgraded and augmented by a model linearization code and a broader algorithmic framework. Also features an interface between the algorithmic code and the interactive modeling system (TROLL), making an unusually wide range of linear systems methods accessible to economists, operations researchers, engineers and physical scientists. 1985 (0-471-81930-1) 324 pp. Linear Statistical Models and Related Methods With Applications to Social Research John Fox A comprehensive, modern treatment of linear models and their variants and extensions, combining statistical theory with applied data analysis. Considers important methodological principles underlying statistical methods. Designed for researchers and students who wish to apply these models to their own work in a flexible manner. 1984 (0 471-09913-9) 496 pp. Statistical Methods for Forecasting Bovas Abraham and Johannes Ledolter This practical, user-oriented book treats the statistical methods and models used to produce short-term forecasts. Provides an intermediate level discussion of a variety of statistical forecasting methods and models and explains their interconnections, linking theory and practice. Includes numerous time-series, autocorrelations, and partial autocorrelation plots. 1983 (0 471-86764-0) 445 pp. |
Contents
PRINCIPAL COMPONENTS ANALYSIS | 26 |
1 | 36 |
FACTOR ANALYSIS | 56 |
Copyright | |
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Common terms and phrases
algorithm approach associated assumptions B₁ B₂ canonical correlation analysis canonical loadings canonical variate canonical weights Chapter cluster column common factors computed contingency table correlation matrix corresponding covariance matrix data matrix defined deletion denoted dimension dimensional discriminant function discussed distance distribution effects eigenvalues equation error rate example explanatory variables F-distribution F-value factor analysis Figure independent variables indicated individual KSI 2 KSI lambda latent class latent class model LISREL maximum likelihood mean measures method multicollinearity multiple discriminant analysis n₁ n₂ null hypothesis objects observations obtained OLS estimators orthogonal POPCHNG posterior probability predictor variables principal components analysis problem procedure regression analysis regression coefficients regression model relationship residuals sample sample-based scores shown solution space squared standard statistically significant stimulus sums-of-squares Table techniques test statistic variance variance-covariance matrix vector X-set X₁ Y₁ Y₂ zero