Contents at a glance:
Preparing data for analysis:
Introduction to SPSS; the data file; defining the data; creating new variables; transforming existing variables; checking data definitions; cleaning data
Describing data:
Tables; graphs; OLAP cubes; measures of central tendency and dispersion; standard scores; the normal distribution; measures of association
Testing simple hypotheses:
Basics of hypothesis testing; t-tests; oneway analysis of variance; multiple comparisons; nonparametric tests; chi square tests; correlation; partial correlation
Building models:
Bivariate and multiple linear regression; loglinear models; discriminant analysis; binary logistic regression; factor analysis; cluster analysis
Using the General Linear Model:
Univariate models; multivariate models; repeated measures
Analyzing scales:
Reliability analysis
Features:
- Chapters start with concise overviews and examples of the use of the procedure
- Tips and warnings help you to avoid common mistakes and work efficiently
- Practical discussions explain the statistical background for each procedure
- Instructions make it easy to obtain the output in the book
- Examples are from diverse disciplines, including psychology, sociology, education, archaeology, medicine, library science, nursing and journalism
- Reviewed by SPSS Inc. staff
Examples include:
- Is a truancy reduction program effective?
- What variables are associated with newspaper readership?
- Can you predict percent body fat from easily obtainable measurements?
- What factors are associated with "getting ahead"?
- How can you predict Internet use from demographic characteristics?
New to this edition:
The book includes a new chapter on the General Loglinear Model and describes the SPSS 13.0 graphics editor. The mixed models chapter from the version 12 book is now in the SPSS 13.0 Advanced Statistical Procedures Companion.