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Cause And Effect Business Analytics For Big And Small Data Chapman Hallcrc Computer Science Data Analysis 1st Edition Dominique Haughton

  • SKU: BELL-237743348
Cause And Effect Business Analytics For Big And Small Data Chapman Hallcrc Computer Science Data Analysis 1st Edition Dominique Haughton
$ 35.00 $ 45.00 (-22%)

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Cause And Effect Business Analytics For Big And Small Data Chapman Hallcrc Computer Science Data Analysis 1st Edition Dominique Haughton instant download after payment.

Publisher: Chapman and Hall/CRC
File Extension: PDF
File size: 5.49 MB
Pages: 300
Author: Dominique Haughton, Jonathan Haughton, Victor S. Y. Lo
ISBN: 9780429172588, 9781482216479, 0429172583, 1482216477
Language: English
Year: 2019
Edition: 1

Product desciption

Cause And Effect Business Analytics For Big And Small Data Chapman Hallcrc Computer Science Data Analysis 1st Edition Dominique Haughton by Dominique Haughton, Jonathan Haughton, Victor S. Y. Lo 9780429172588, 9781482216479, 0429172583, 1482216477 instant download after payment.

Among the most important questions that businesses ask are some very simple ones: If I decide to do something, will it work? And if so, how large are the effects? To answer these predictive questions, and later base decisions on them, we need to establish causal relationships. Establishing and measuring causality can be difficult. This book explains the most useful techniques for discerning causality and illustrates the principles with numerous examples from business. It discusses randomized experiments (aka A/B testing) and techniques such as propensity score matching, synthetic controls, double differences, and instrumental variables. There is a chapter on the powerful AI approach of Directed Acyclic Graphs (aka Bayesian Networks), another on structural equation models, and one on time-series techniques, including Granger causality. At the heart of the book are four chapters on uplift modeling, where the goal is to help firms determine how best to deploy their resources for marketing or other interventions. We start by modeling uplift, discuss the test-and-learn process, and provide an overview of the prescriptive analytics of uplift. The book is written in an accessible style and will be of interest to data analysts and strategists in business, to students and instructors of business and analytics who have a solid foundation in statistics, and to data scientists who recognize the need to take seriously the need for causality as an essential input into effective decision-making.