1st Edition

Simulation and Power Analysis Using R

By Brandon LeBeau Copyright 2027
245 Pages 42 B/W Illustrations
by Chapman & Hall

Simulation-based methods are increasingly central to modern applied research, particularly as study designs and statistical models grow more complex. Traditional analytic tools for power analysis and study planning often rely on simplifying assumptions that are difficult to justify in real-world settings. Simulation provides a flexible alternative, allowing researchers to explore design choices,... Read more

1 Introduction

2 Simulating General Linear Models

3 Simulating General Linear Mixed Models

4 Simulating Generalized Linear (Mixed) Models

5 Varying Simulation Parameters

6 Simulating Data that are Realistic

7 What is Power?

8 Power by Simulation

9 Varying Arguments to Estimate Power

10 Alternatives to Power from Significance Testing

11 Randomized Controlled Trials

12 Cluster Randomized Controlled Trials

13 Interrupted Time Series

14 Regression Discontinuity

15 Difference in Differences

16 Propensity Scores

17 Non-Experimental Designs

18 Simulation as a Framework for Study Design and Causal Reasoning

Biography

Brandon LeBeau is a data scientist, statistical software developer, consultant, and educator with expertise in applied statistical methodology, causal inference, and reproducible modeling. His research interests include quantitative program evaluation, research software development, and simulation-based statistical methods. He has developed multiple research software packages available on CRAN and GitHub, including the simglm R package (LeBeau, 2025), which serves as the primary simulation framework used throughout this book.