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Causal Inference in R

You're reading from   Causal Inference in R Decipher complex relationships with advanced R techniques for data-driven decision-making

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Product type Paperback
Published in Nov 2024
Publisher Packt
ISBN-13 9781837639021
Length 382 pages
Edition 1st Edition
Languages
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Author (1):
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Subhajit Das Subhajit Das
Author Profile Icon Subhajit Das
Subhajit Das
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Table of Contents (21) Chapters Close

Preface 1. Part 1:Foundations of Causal Inference
2. Chapter 1: Introducing Causal Inference FREE CHAPTER 3. Chapter 2: Unraveling Confounding and Associations 4. Chapter 3: Initiating R with a Basic Causal Inference Example 5. Part 2: Practical Applications and Core Methods
6. Chapter 4: Constructing Causality Models with Graphs 7. Chapter 5: Navigating Causal Inference through Directed Acyclic Graphs 8. Chapter 6: Employing Propensity Score Techniques 9. Chapter 7: Employing Regression Approaches for Causal Inference 10. Chapter 8: Executing A/B Testing and Controlled Experiments 11. Chapter 9: Implementing Doubly Robust Estimation 12. Part 3: Advanced Topics and Cutting-Edge Methods
13. Chapter 10: Analyzing Instrumental Variables 14. Chapter 11: Investigating Mediation Analysis 15. Chapter 12: Exploring Sensitivity Analysis 16. Chapter 13: Scrutinizing Heterogeneity in Causal Inference 17. Chapter 14: Harnessing Causal Forests and Machine Learning Methods 18. Chapter 15: Implementing Causal Discovery in R 19. Index 20. Other Books You May Enjoy

Employing Propensity Score Techniques

In this chapter, we’ll familiarize ourselves with the concept of propensity scores, something we touched on lightly in Chapters 2 and 3. It’s a vital tool for identifying confounding variables in causal inference. To be specific, propensity scores help to clear the mist in knowing which variables need conditioning by balancing confounding variables between groups of data. This methodology has power in transforming observational studies so that they resemble randomized trials, a kind of statistical practice that’s crucial for solid causal conclusions.

In addition to learning new theory, we will also be getting our hands dirty with R code. We’ll walk through techniques such as matching, stratification, and weighting – each of which has a unique flair. We’ll also practice our theory with real-life examples, turning abstract concepts into concrete skills. By the end of this chapter, you won’t just...

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