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Impact Evaluation in Firms and Organizations (With Applications in R and Python)
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Product Details
Author:
Martin Huber
Format:
Paperback
Pages:
160
Publisher:
MIT Press (August 5, 2025)
Language:
English
Audience:
General/trade
ISBN-13:
9780262552929
ISBN-10:
0262552922
Weight:
10.2oz
Dimensions:
7" x 9" x 0.38"
File:
RandomHouse-PRH_Book_Company_PRH_PRT_Onix_full_active_D20260405T165652_155746800-20260405.xml
Folder:
RandomHouse
List Price:
$40.00
Country of Origin:
United States
Pub Discount:
65
Case Pack:
40
As low as:
$30.80
Publisher Identifier:
P-RH
Discount Code:
A
QuickShip:
Yes
Imprint:
The MIT Press
Overview
A comprehensive, nontechnical guide to the methods of data-based impact evaluation in companies and organizations, with coverage of machine learning techniques.
In today's dynamic business climate, organizations face the constant challenge of making informed decisions about their interventions, from marketing campaigns and pricing strategies to employee training programs. In this practical textbook, Martin Huber provides a concise but comprehensive guide to quantitatively assessing the impact of such efforts, enabling decision-makers to make evidence-based choices.
The book introduces fundamental concepts, emphasizing the importance of causal analysis in understanding the true effects of interventions, before detailing a wide range of quantitative methods, including experimental and nonexperimental approaches. Huber then explores the integration of machine learning techniques for impact evaluation in the context of big data, sharing cutting-edge tools for data analysis. Centering real-world, global applications, this accessible text is an invaluable resource for anyone seeking to enhance their decision-making processes through data-driven insights.
In today's dynamic business climate, organizations face the constant challenge of making informed decisions about their interventions, from marketing campaigns and pricing strategies to employee training programs. In this practical textbook, Martin Huber provides a concise but comprehensive guide to quantitatively assessing the impact of such efforts, enabling decision-makers to make evidence-based choices.
The book introduces fundamental concepts, emphasizing the importance of causal analysis in understanding the true effects of interventions, before detailing a wide range of quantitative methods, including experimental and nonexperimental approaches. Huber then explores the integration of machine learning techniques for impact evaluation in the context of big data, sharing cutting-edge tools for data analysis. Centering real-world, global applications, this accessible text is an invaluable resource for anyone seeking to enhance their decision-making processes through data-driven insights.
- Highlights the relevance of AI and equips readers to leverage advanced analytical techniques in the era of digital transformation
- Is ideal for introductory courses on impact evaluation or causal analysis
- Covers A/B testing, selection-on-observables, instrumental variables, regression discontinuity designs, and difference-in-differences
- Features extensive examples and demonstrations in R and Python
- Suits a wide audience, including business professionals and students with limited statistical expertise








