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Cover image for Data analysis using SAS Enterprise guide
Title:
Data analysis using SAS Enterprise guide
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Publication Information:
Cambridge ; New York : Cambridge University Press, 2009
Physical Description:
xix, 378 p. : ill. ; 25 cm.
ISBN:
9780521112680

9780521130073

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30000010277796 HA32 M499 2009 Open Access Book Book
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Summary

Summary

This book presents the basic procedures for utilizing SAS Enterprise Guide to analyze statistical data. SAS Enterprise Guide is a graphical user interface (point and click) to the main SAS application. Each chapter contains a brief conceptual overview and then guides the reader through concrete step-by-step examples to complete the analyses. The eleven sections of the book cover a wide range of statistical procedures including descriptive statistics, correlation and simple regression, t tests, one-way chi square, data transformations, multiple regression, analysis of variance, analysis of covariance, multivariate analysis of variance, factor analysis, and canonical correlation analysis. Designed to be used either as a stand-alone resource or as an accompaniment to a statistics course, the book offers a smooth path to statistical analysis with SAS Enterprise Guide for advanced undergraduate and beginning graduate students, as well as professionals in psychology, education, business, health, social work, sociology, and many other fields.


Table of Contents

Part I Introducing SAS Enterprise Guide
1 SAS Enterprise Guide projects
2 Placing data into SAS Enterprise Guide projects
Part II Performing and Viewing Output
3 Performing statistical analyses in SAS Enterprise Guide
4 Managing and viewing output
Part III Manipulating Data
5 Sorting data and selecting cases
6 Recoding existing variables
7 Computing new variables
Part IV Describing Data
8 Descriptive statistics
9 Graphing data
10 Standardizing variables based on the sample data
11 Standardizing variables based on existing norms
Part V Score Distribution Issues
12 Detecting outliers
13 Assessing normality
14 Nonlinearly transforming variables in order to meet underlying assumptions
Part VI Correlation and Prediction
15 Bivariate correlation: Pearson product moment and Spearman rho correlations
16 Simple linear regression
17 Multiple linear regression
18 Simple logistic regression
19 Multiple logistic regression
Part VII Comparing Means t Tests
20 Independent groups t test
21 Correlated samples t test
22 Single sample t test
Part VIII Comparing means ANOVA
23 One-way between subjects analysis of variance
24 Two-way between subjects design
25 One-way within subjects analysis of variance
26 Two-way mixed ANOVA design
Part IX Nonparametric Procedures
27 One-way chi square
28 Two-way chi square
29 Nonparametric between subjects one-way ANOVA
Part X Advanced ANOVA Techniques
30 One-way between subjects analysis of covariance
31 One-way between subjects multivariate analysis of variance
Part XI Analysis of Structure
32 Factor analysis
33 Canonical correlation analysis
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