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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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17
Index

Code/packages

Table 1.3 gives a partial list of libraries/packages in R and Python that are useful for programming and coding related to modeling and reasoning with probabilistic graphical models in Bayesian networks, structured equation modeling, and structured causal models. We will use some of these libraries, as well as others introduced throughout the chapters, in hands-on practice.

Name

Purpose

Language

Link

py-bbn

Implementation of probabilistic and causal inference in Bayesian belief networks using exact inference algorithms

Python

https://github.com/vangj/py-bbn/blob/master/docs/source/index.rst

pgmpy

...
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73
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Causal Inference with Bayesian Networks
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