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{ "item_title" : "Causal Machine Learning for Economists", "item_author" : [" Danny Munrow", "Oliver J. Thatch "], "item_description" : "Reactive PublishingCausal inference sits at the center of modern economic research, yet traditional econometric methods increasingly intersect with high-dimensional data and machine learning workflows. Causal Machine Learning for Economists bridges that gap by presenting practical, implementation-focused approaches to contemporary causal modeling using Python.This book introduces core frameworks including Double Machine Learning (Double ML), Synthetic Control methods, Uplift Modeling, and applied policy evaluation techniques. Rather than treating these topics as isolated tools, the text positions them within a coherent analytical workflow suitable for empirical research, policy analysis, and applied economic modeling.Readers will learn how to: Estimate treatment effects using orthogonalized and debiased machine learning approachesConstruct and validate synthetic control models for comparative case analysisApply uplift modeling to heterogeneous treatment effect estimationImplement robust policy evaluation pipelines using modern Python librariesIntegrate causal modeling into reproducible research environmentsEach chapter combines conceptual foundations with structured code examples designed for clarity and replicability. Mathematical intuition is presented alongside practical implementation, ensuring that both applied economists and quantitatively trained researchers can operationalize these methods effectively.This volume is intended for economists, data scientists, graduate students, and policy analysts who seek a structured introduction to causal machine learning within a rigorous economic framework.", "item_img_path" : "https://covers2.booksamillion.com/covers/bam/9/79/824/842/9798248429141_b.jpg", "price_data" : { "retail_price" : "41.99", "online_price" : "41.99", "our_price" : "41.99", "club_price" : "41.99", "savings_pct" : "0", "savings_amt" : "0.00", "club_savings_pct" : "0", "club_savings_amt" : "0.00", "discount_pct" : "10", "store_price" : "" } }
Causal Machine Learning for Economists|Danny Munrow

Causal Machine Learning for Economists : Double ML, Synthetic Control, Uplift Modeling, and Policy Evaluation with Python

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Overview

Reactive Publishing

Causal inference sits at the center of modern economic research, yet traditional econometric methods increasingly intersect with high-dimensional data and machine learning workflows. Causal Machine Learning for Economists bridges that gap by presenting practical, implementation-focused approaches to contemporary causal modeling using Python.

This book introduces core frameworks including Double Machine Learning (Double ML), Synthetic Control methods, Uplift Modeling, and applied policy evaluation techniques. Rather than treating these topics as isolated tools, the text positions them within a coherent analytical workflow suitable for empirical research, policy analysis, and applied economic modeling.

Readers will learn how to:

  • Estimate treatment effects using orthogonalized and debiased machine learning approaches

  • Construct and validate synthetic control models for comparative case analysis

  • Apply uplift modeling to heterogeneous treatment effect estimation

  • Implement robust policy evaluation pipelines using modern Python libraries

  • Integrate causal modeling into reproducible research environments

Each chapter combines conceptual foundations with structured code examples designed for clarity and replicability. Mathematical intuition is presented alongside practical implementation, ensuring that both applied economists and quantitatively trained researchers can operationalize these methods effectively.

This volume is intended for economists, data scientists, graduate students, and policy analysts who seek a structured introduction to causal machine learning within a rigorous economic framework.

This item is Non-Returnable

Details

  • ISBN-13: 9798248429141
  • ISBN-10: 9798248429141
  • Publisher: Independently Published
  • Publish Date: February 2026
  • Dimensions: 9 x 6 x 1.09 inches
  • Shipping Weight: 1.58 pounds
  • Page Count: 542

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