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  • Book Overview & Buying Causal Inference with Bayesian Networks
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Causal Inference with Bayesian Networks

Causal Inference with Bayesian Networks

By : Yousri El Fattah, Reza Bagheri
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Causal Inference with Bayesian Networks

Causal Inference with Bayesian Networks

By: Yousri El Fattah, Reza Bagheri

Overview of this book

This practical guide explores Bayesian networks, graphical models, and causal inference for probabilistic reasoning and treatment effect estimation using real-world data. You’ll learn Bayesian networks, conditional independence, structural causal models (SCM), and intervention-based reasoning for causal analysis. The book explains how graphical models support probabilistic inference, decision-making, and knowledge representation across healthcare, economics, epidemiology, finance, and social sciences. You’ll work with probabilistic inference methods such as variable elimination, tree clustering, and Bayesian network reasoning. For causal inference, the book covers Pearl’s do-calculus, backdoor and front-door criteria, causal effect identification, and treatment effect estimation using observational data. You’ll also explore the potential outcomes framework and machine learning approaches for causal inference, including meta-learners for estimating conditional average treatment effects and heterogeneous treatment effects. Practical examples and exercises in R and Python help reinforce concepts and build implementation skills for causal modeling workflows. By the end of the book, you’ll be able to design Bayesian network models, perform probabilistic and causal inference, and develop practical causal analysis applications for evidence-based decision-making.
Table of Contents (18 chapters)
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16
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Index
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Index

A

acyclic database schemes 203

join dependencies and join trees 207-210

join dependencies (JDs) 203, 204

join dependencies, representing with hypergraphs 205, 206

local and global consistency 204, 205

Acyclic Directed Mixed Graph (ADMG) 163, 417

acyclic join dependency 207

Adenotonsillar Hypertrophy (ATH) 154

Adjusted Goodness of Fit Index (AGFI) 137

algorithmic statistical methods 480, 481

alpha-acyclic 207

ancestors 254

ancestral graphs 259, 260

ancestral set 254, 259, 260

asymmetric decision problem 223

average causal effect (ACE) 424, 473

Average Treatment Effect (ATE) 20, 467, 473, 560, 611

estimating 561, 562

POF assumptions, used to identify 474

average treatment effect on the treated (ATT) 472

average treatment effect on the untreated (ATU) 473

axioms of probability 36

B

back-door adjustment

example 424, 425

Pearl’s back-door adjustment 424

back-door criterion...

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83
Tech Concepts
36
Programming languages
73
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Causal Inference with Bayesian Networks
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