多変量統計学の記述的研究への応用<br>How to Use Multivariate Statistics in Descriptive Research : Making the Invisible Visible

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多変量統計学の記述的研究への応用
How to Use Multivariate Statistics in Descriptive Research : Making the Invisible Visible

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  • 製本 Paperback:紙装版/ペーパーバック版/ページ数 208 p.
  • 言語 ENG
  • 商品コード 9781394362608

Full Description

Reveal hidden patterns in your data using multivariate descriptive analysis

Many researchers believe multivariate statistics belong only to inferential research, leaving powerful analytical tools unused in descriptive studies. How to Use Multivariate Statistics in Descriptive Research: Making the Invisible Visible challenges this assumption directly, demonstrating how factor analysis, cluster analysis, and discriminant analysis can expose patterns and relationships that simpler methods overlook - transforming how social and behavioral scientists understand their data.

Written in clear, practical language, this book provides step-by-step instructions for conducting multivariate analyses using SPSS, R, and Excel. Each chapter features real-world illustrations that ground abstract concepts in concrete applications. Reflective sections titled "Revealing the Opening Quote" connect statistical insights to broader understanding, helping readers see beyond numbers to meaningful interpretation.

Readers will also find:

Detailed guidance on applying factor analysis to identify underlying constructs within complex descriptive datasets and research questions
Cluster analysis techniques that group observations based on shared characteristics, revealing natural patterns invisible to univariate approaches
Discriminant analysis methods that classify cases and predict group membership using multiple variables simultaneously for clearer interpretation
Practical software tutorials walking through each statistical procedure in SPSS, R, and Excel with reproducible examples
Chapter-ending reflections that bridge statistical technique to conceptual understanding, reinforcing both mechanical skill and interpretive insight

Designed for educators, graduate students, and researchers in the social and behavioral sciences, this book empowers readers to move beyond basic descriptive statistics. By mastering multivariate techniques, researchers gain the ability to detect hidden structures in their data and communicate findings with greater precision and confidence.

Contents

Preface xi

Introduction 1

Part One A New Perspective on Descriptive Research 5

1 Reframing Your Perspectives 7

2 Descriptive Research 14

3 Statistics 17

Part Two Procedures for Making the Invisible Visible 27

4 Discriminant Analysis 31

5 Computing Discriminant Analysis 39

6 Cluster Analysis 49

7 Computing Cluster Analysis 59

8 Factor Analysis 73

9 Computing Factor Analysis 91

Part Three Multivariate Procedures in Action 109

10 The Questionnaire 111

11 Building Synergy: Combining Factor, Cluster, and Discriminant Analysis in Descriptive Research 124

12 Seeing with New Eyes: Integrating Quantitative, Qualitative, and Mixed Methods to Enhance Descriptive Research 143

Part Four Abstracts of Actual Studies 157

13 Abstracts of Studies 159

14 Take Action! 177

References 181

Index 000

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