Using Multivariate StatisticsThis text takes a practical approach to multivariate data analysis, with an introductionto the most commonly encountered statistical and multivariate techniques. Using Multivariate Statistics provides practical guidelines for conducting numerous types of multivariate statistical analyses. It gives syntax and output for accomplishing many analyses through the most recent releases of SAS, SPSS, and SYSTAT, some not available in software manuals. The book maintains its practical approach, still focusing on the benefits and limitations of applications of a technique to a data set - when, why, and how to do it. Overall, it provides advanced students with a timely and comprehensive introduction to today's most commonly encountered statistical and multivariate techniques, while assuming only a limited knowledge ofhigher-level mathematics. *A new chapter on survival analysis (Ch. 15) allows students to analyze data where the outcome is time until something happens. This is very popular in biomedical research. *A new chapter on time series analysis (Ch. 16) encourages students to learn to model patterns in data gathered over many trials and to test for the effectiveness on an intervention ( |
From inside the book
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Page 18
... regression are not multivariate techniques , but they are integrated into the general linear model in Chapter 17 . 2.1.1.2 Multiple R Multiple correlation assesses the degree to which one continuous variable ( the DV ) is related to a ...
... regression are not multivariate techniques , but they are integrated into the general linear model in Chapter 17 . 2.1.1.2 Multiple R Multiple correlation assesses the degree to which one continuous variable ( the DV ) is related to a ...
Page 131
Barbara G. Tabachnick, Linda S. Fidell. 5.5 Major Types of Multiple Regression There are three major analytic strategies in multiple regression : standard multiple regression , sequential ( hierarchical ) regression , and statistical ...
Barbara G. Tabachnick, Linda S. Fidell. 5.5 Major Types of Multiple Regression There are three major analytic strategies in multiple regression : standard multiple regression , sequential ( hierarchical ) regression , and statistical ...
Page 142
... Regression In these two forms of regression , sr is interpreted as the amount of variance added to R2 by each IV at the point that it enters the equation . The research question is ; How much does this IV add to mul- tiple R2 after IVs ...
... Regression In these two forms of regression , sr is interpreted as the amount of variance added to R2 by each IV at the point that it enters the equation . The research question is ; How much does this IV add to mul- tiple R2 after IVs ...
Contents
Using the Book | 17 |
Review of Univariate and Bivariate Statistics | 31 |
Screening Data | 56 |
Copyright | |
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Common terms and phrases
addition adjusted analysis assessed associated assumption attitude canonical cell Chapter classification coding combination comparisons considered continuous correlation covariates deleted depends deviations differences discriminant function discussed distribution effects equation error estimated evaluated example expected factor Figure frequencies groups hypothesis important included indicates interaction interpretation interval labeled levels linear loadings logistic regression MANOVA matrix means measured methods missing multiple multivariate normality observed outliers output partial pattern performed plots predicted predictors probability problem procedure produce programs provides ratio regression regression coefficients relationship reliable researcher residuals rotation sample scores Selected separate shown shows significant solution Specify SPSS standard statistical step subjects sum of squares Syntax SYSTAT Table techniques tion transformation treatment Type univariate values variables variance variates women Yes Yes Yes