
The Complete Statistical Test Selection Bible: 33 Chapters, 120+ Decision Frameworks, and Step-by-Step Methods to Master Hypothesis Testing, … Analysis, and Advanced Research Statistics
Author(s): T Aadhya (Author)
- Publisher Finelybook 出版社: Independently published
- Publication Date 出版日期: May 13, 2026
- Language 语言: English
- Print length 页数: 442 pages
- ASIN: B0H1Q92WQX
- ISBN-13: 9798196763724
Book Description
Choosing the right statistical test should not feel like guessing.
Too many students, researchers, and analysts know their data, understand their research question, and still freeze when it is time to choose between a t-test, ANOVA, regression, chi-square, logistic regression, mixed model, Bayesian analysis, SEM, or another advanced method. One wrong choice can lead to invalid assumptions, weak reporting, rejected papers, confusing results, and hours lost searching scattered explanations online.
The problem is not that statistics is impossible. The problem is that most books teach tests one at a time, without showing the decision path that connects the research question to the correct method.
The Complete Statistical Test Selection Biblewas created to solve that problem.
This practical reference guides you from the first research question to the final reported result using clear decision frameworks, assumption protocols, and step-by-step method guidance. Across 33 chapters and 120+ decision frameworks, you will learn how to identify the question family, classify variables, check design structure, evaluate assumptions, select the right test, interpret effect sizes, and report results with confidence.
Instead of memorizing isolated formulas, you will learn how to think like a statistical decision-maker.
Inside, you will discover how to:
- Choose the correct statistical test based on your research question, variables, and design
- Understand when to use t-tests, ANOVA, correlation, regression, chi-square, and nonparametric tests
- Check assumptions before interpreting results
- Select between Pearson, Spearman, Kendall, logistic regression, ANCOVA, MANOVA, mixed models, and more
- Apply Bayesian analysis, SEM, survival analysis, count models, reliability analysis, and power analysis
- Report effect sizes, confidence intervals, diagnostics, and APA-style results
- Avoid common mistakes such as using post-hoc power, ignoring dependence, or treating ordinal data incorrectly
- Use practical workflows for research projects, dissertations, theses, journal articles, and applied analysis
This book is designed for readers who need clarity, not confusion.
Whether you are a student writing a thesis, a PhD researcher preparing a manuscript, an instructor teaching methods, a data analyst supporting research teams, or an applied scientist working with real-world data, this book gives you a structured path through statistical decision-making.
By the end, you will be able to look at a research question and know exactly what to ask next:
What is the outcome variable?
What is the predictor?
What is the measurement level?
Are the observations independent, paired, repeated, nested, or censored?
Which assumptions matter?
Which effect size belongs with the method?
How should the result be reported?
That is the transformation this book offers: moving from uncertainty to a clear, defensible statistical choice.
If you want a complete, practical, and visually organized guide to choosing, checking, applying, and reporting statistical tests, The Complete Statistical Test Selection Biblebelongs on your desk.
Start building statistical confidence one decision framework at a time.
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