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Data Analysis with IBM SPSS Statistics

You're reading from   Data Analysis with IBM SPSS Statistics Implementing data modeling, descriptive statistics and ANOVA

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Product type Paperback
Published in Sep 2017
Publisher Packt
ISBN-13 9781787283817
Length 446 pages
Edition 1st Edition
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Authors (2):
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Ken Stehlik-Barry Ken Stehlik-Barry
Author Profile Icon Ken Stehlik-Barry
Ken Stehlik-Barry
Anthony Babinec Anthony Babinec
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Anthony Babinec
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Table of Contents (17) Chapters Close

Preface 1. Installing and Configuring SPSS FREE CHAPTER 2. Accessing and Organizing Data 3. Statistics for Individual Data Elements 4. Dealing with Missing Data and Outliers 5. Visually Exploring the Data 6. Sampling, Subsetting, and Weighting 7. Creating New Data Elements 8. Adding and Matching Files 9. Aggregating and Restructuring Data 10. Crosstabulation Patterns for Categorical Data 11. Comparing Means and ANOVA 12. Correlations 13. Linear Regression 14. Principal Components and Factor Analysis 15. Clustering 16. Discriminant Analysis

Principal Components and Factor Analysis

The SPSS Statistics FACTOR procedure provides a comprehensive procedure for doing principal components analysis and factor analysis. The underlying computations for these two techniques are similar, which is why SPSS Statistics bundles them in the same procedure. However, they are sufficiently distinct, so you should consider what your research goals are and choose the appropriate method for your goals.

Principal components analysis (PCA) finds weighted combinations of the original variables that account for the total variance in the original variables. The first principal component finds the linear combination of variables that accounts for as much variance as possible. The second principal component finds the linear combination of variables that accounts for as much of the remaining variance as possible, and also has the property that...

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