
Download the free Kindle app and start reading Kindle books instantly on your smartphone, tablet or computer – no Kindle device required. Learn more
Read instantly on your browser with Kindle for Web.
Using your mobile phone camera, scan the code below and download the Kindle app.


Follow the Authors
OK
Machine Learning for Business Analytics: Concepts, Techniques, and Applications with Analytic Solver Data Mining Hardcover – March 28 2023
Amazon Price | New from | Used from |
Kindle Edition
"Please retry" | — | — |
Hardcover
"Please retry" | $168.95 | $168.95 | — |
- Kindle Edition
$160.50 Read with Our Free App - Hardcover
$168.95
Machine learning ―also known as data mining or predictive analytics― is a fundamental part of data science. It is used by organizations in a wide variety of arenas to turn raw data into actionable information.
Machine Learning for Business Analytics: Concepts, Techniques, and Applications in Analytic Solver Data Mining provides a comprehensive introduction and an overview of this methodology. The fourth edition of this best-selling textbook covers both statistical and machine learning algorithms for prediction, classification, visualization, dimension reduction, rule mining, recommendations, clustering, text mining, experimentation, time series forecasting and network analytics. Along with hands-on exercises and real-life case studies, it also discusses managerial and ethical issues for responsible use of machine learning techniques.
This fourth edition of Machine Learning for Business Analytics also includes:
- An expanded chapter focused on discussion of deep learning techniques
- A new chapter on experimental feedback techniques including A/B testing, uplift modeling, and reinforcement learning
- A new chapter on responsible data science
- Updates and new material based on feedback from instructors teaching MBA, Masters in Business Analytics and related programs, undergraduate, diploma and executive courses, and from their students
- A full chapter devoted to relevant case studies with more than a dozen cases demonstrating applications for the machine learning techniques
- End-of-chapter exercises that help readers gauge and expand their comprehension and competency of the material presented
- A companion website with more than two dozen data sets, and instructor materials including exercise solutions, slides, and case solutions
This textbook is an ideal resource for upper-level undergraduate and graduate level courses in data science, predictive analytics, and business analytics. It is also an excellent reference for analysts, researchers, and data science practitioners working with quantitative data in management, finance, marketing, operations management, information systems, computer science, and information technology.
- ISBN-101119829836
- ISBN-13978-1119829836
- Edition4th
- PublisherWiley
- Publication dateMarch 28 2023
- LanguageEnglish
- Dimensions18.54 x 3.3 x 25.4 cm
- Print length624 pages
Frequently bought together
- +
- +
Customers who bought this item also bought
Special offers and product promotions
- Pre-order Price Guarantee! Order now and if the Amazon.ca price decreases between your order time and the end of the day of the release date, you'll receive the lowest price. Here's how (restrictions apply)
From the Publisher
![]() |
![]() |
![]() |
![]() |
![]() |
|
---|---|---|---|---|---|
Data Mining for Business Analytics: Concepts Techniques & Applications in Python | Machine Learning for Business Analytics: in RapidMiner , 1st Edition | Machine Learning for Business Analytics: in R, 2nd Edition | Machine Learning for Business Analytics: with JMP Pro, 2nd Edition | Machine Learning for Business Analytics: with Analytic Solver Data Mining, 4e | |
Title | Data Mining for Business Analytics: Concepts, Techniques and Applications in Python | Machine Learning for Business Analytics: Concepts, Techniques and Applications in RapidMiner | Machine Learning for Business Analytics: Concepts, Techniques, and Applications in R, 2nd Edition | Machine Learning for Business Analytics: Concepts, Techniques and Applications with JMP Pro, 2nd Edition | Machine Learning for Business Analytics: Concepts, Techniques, and Applications with Analytic Solver Data Mining, 4th Edition |
Authors | Galit Shmueli, Peter C. Bruce, Peter Gedeck, Nitin R. Patel | Galit Shmueli, Peter C. Bruce, Amit V. Deokar, Nitin R. Patel | Galit Shmueli, Peter C. Bruce, Peter Gedeck, Inbal Yahav Shenberger, Nitin R. Patel | Galit Shmueli, Peter C. Bruce, Mia L. Stephens, Muralidhara A, Nitin R. Patel | Galit Shmueli, Peter C. Bruce, Kuber R. Deokar, Nitin R. Patel |
Audience level | Intermediate/Advanced | Intermediate/Advanced | Intermediate/Advanced | Intermediate/Advanced | Intermediate/Advanced |
Suitable for use in higher education courses? | ✓ | ✓ | ✓ | ✓ | ✓ |
Professional application | Graduate/upper-undergraduate courses in data mining, predictive analytics, and business analytics. A reference for analysts, researchers, and practitioners working with quantitative methods in business, finance, marketing, computer science, and IT. | For analysts, researchers, and data science practitioners working with quantitative data in management, finance, marketing, operations management, information systems, computer science, and information technology. | Reference for analysts, researchers, and practitioners working with quantitative methods in the fields of business, finance, marketing, computer science, and information technology who have a special interest in R. | For students and instructors of business analytics and data mining classes, as well as data science practitioners and professionals in data-driven industries. | Graduate/upper-undergraduate courses in data science and predictive and business analytics. A reference for analysts, researchers, and practitioners working with quantitative data in management, finance, marketing, OM, IS, computer science, and IT. |
Related software | Python - a free and open-source software | Integrated use of RapidMiner, an open-source machine learning platform that has become commercially popular in recent years | R (freely available for download) | JMP Pro (Statistical package from the SAS Institute) | Analytic Solver Data Mining |
Trial license included with text | Free | Free | Free | No | Free 140-day license |
Description | 12+ cases requiring use of various data mining techniques and a related website with 24+ data sets, PowerPoints, and exercise and case solutions. Provides a solid, non-mathematical treatment of data mining concepts and methods illustrated with Python | Covers statistical and machine learning algorithms for prediction, classification, visualization, dimension reduction, rule mining, recommendations, clustering, text mining, experimentation, and network analytics. Includes exercises and case studies. | Expanded to focus on discussions of deep learning techniques, experimental feedback techniques including A/B testing, uplift modeling, and reinforcement learning. Contains new information on responsible data science and 12+ application-based cases. | Updated with new topics and instructional material, this remains the only comprehensive introduction to this set of analytical tools for businesses. Additions include chapters on Text Mining and Responsible Data Science, and a new guide to JMP Pros. | Covers both statistical and machine learning algorithms for data prediction, classification, and visualization, using the latest edition of Analytic Solver software. Includes hands-on exercises and real-life cases on managerial and ethical issues. |
Content length | 608 pages | 736 pages | 688 pages | 624 pages | 608 pages |
Product description
From the Back Cover
Machine learning―also known as data mining or predictive analytics―is a fundamental part of data science. It is used by organizations in a wide variety of arenas to turn raw data into actionable information.
Machine Learning for Business Analytics: Concepts, Techniques, and Applications with Analytic Solver® Data Mining provides a comprehensive introduction and an overview of this methodology. The fourth edition of this best-selling textbook covers both statistical and machine learning algorithms for prediction, classification, visualization, dimension reduction, rule mining, recommendations, clustering, text mining, experimentation, time series forecasting and network analytics. Along with hands-on exercises and real-life case studies, it also discusses managerial and ethical issues for responsible use of machine learning techniques.
This fourth edition of Machine Learning for Business Analytics also includes:
- An expanded chapter on deep learning
- A new chapter on experimental feedback techniques, including A/B testing, uplift modeling, and reinforcement learning
- A new chapter on responsible data science
- Updates and new material based on feedback from instructors teaching MBA, Masters in Business Analytics and related programs, undergraduate, diploma and executive courses, and from their students
- A full chapter devoted to relevant case studies with more than a dozen cases demonstrating applications for the machine learning techniques
- End-of-chapter exercises that help readers gauge and expand their comprehension and competency of the material presented
- A companion website with more than two dozen data sets, and instructor materials including exercise solutions, slides, and case solutions
This textbook is an ideal resource for upper-level undergraduate and graduate level courses in data science, predictive analytics, and business analytics. It is also an excellent reference for analysts, researchers, and data science practitioners working with quantitative data in management, finance, marketing, operations management, information systems, computer science, and information technology.
About the Author
Galit Shmueli, PhD, is Distinguished Professor and Institute Director at National Tsing Hua University’s Institute of Service Science. She has designed and instructed business analytics courses since 2004 at University of Maryland, Statistics.com, The Indian School of Business, and National Tsing Hua University, Taiwan.
Peter C. Bruce, is Founder of the Institute for Statistics Education at Statistics.com, and Chief Learning Officer at Elder Research, Inc.
Kuber R. Deokar, is the Data Science Team Lead at UpThink Experts, India. He is also a faculty member at Statistics.com.
Nitin R. Patel, PhD, is cofounder and lead researcher at Cytel Inc. He was also a co-founder of Tata Consultancy Services. A Fellow of the American Statistical Association, Dr. Patel has served as a visiting professor at the Massachusetts Institute of Technology and at Harvard University. He is a Fellow of the Computer Society of India and was a professor at the Indian Institute of Management, Ahmedabad, for 15 years.
Product details
- Publisher : Wiley; 4th edition (March 28 2023)
- Language : English
- Hardcover : 624 pages
- ISBN-10 : 1119829836
- ISBN-13 : 978-1119829836
- Item weight : 1.38 kg
- Dimensions : 18.54 x 3.3 x 25.4 cm
- Customer Reviews:
About the authors
Galit Shmueli is Distinguished Professor at the Institute of Service Science, National Tsing Hua University, Taiwan. She is also a visiting scholar at Academia Sinica's Institute of Statistical Science. Between 2011-2014 she was the SRITNE Chaired Professor of Data Analytics and Associate Professor of Statistics & Information Systems at the Indian School of Business. She is best known for her research and teaching in business analytics, with a focus on statistical and data mining methods for contemporary data and applications in information systems and healthcare.
Dr. Shmueli's research has been published in the statistics, management, information systems, and marketing literature. She authored/co-authored over ninety journal articles, books, textbooks and book chapters, including the popular textbook Data Mining for Business Intelligence and Practical Time Series Forecasting. Dr. Shmueli is an award-winning teacher and speaker on data analytics.
She has taught at Carnegie Mellon University, University of Maryland, the Israel Institute of Technology, Statistics.com and the Indian School of Business. Her experience spans business and engineering students and professionals, both online and on-ground. Dr. Shmueli teaches courses on data mining, statistics, forecasting, data visualization, and industrial statistics.
For more information, visit www.galitshmueli.com
Peter Bruce is the President and Founder of the Institute for Statistics Education at Statistics.com, a privately-owned online educational institution in Arlington, VA. Founded in 2002, the Institute specializes in introductory and graduate level online education in statistics, optimization, risk modeling, predictive modeling, data mining, and other subjects in quantitative analytics.
Prior to founding Statistics.com, in partnership with the noted economist Julian Simon, Peter continued and commercialized the development of Simon's Resampling Stats, a tool for bootstrapping and resampling. In his work at Cytel Software Corp., he developed Box Sampler along similar lines, and helped bring XLMiner, a data mining add-in for Excel, to market. He has authored a number of journal articles in the area of resampling, and is a co-author (with Galit Shmueli and Nitin Patel) of "Data Mining for Business Intelligence"​ (Wiley, 2nd ed. 2010). He is also the author of "Introductory Statistics and Analytics"​ (Wiley, 2014). Early in his career, he co-authored (with D. Traynham) a noted review of airline deregulation in the National Review (May, 1980).
Peter's role at the Institute centers on course development and faculty recruitment - there are over 60 faculty members from around the world who are published experts in their fields; most teach from their own texts. He also teaches a course on resampling methods.
Peter has degrees in Russian from Princeton and Harvard, and an MBA from the University of Maryland; he is an autodidact in the area of statistics. Prior to his work in statistics, Peter worked in the US diplomatic corps as a Foreign Service Officer.
Customer reviews
Top reviews from other countries


Book is not written very clearly and some sentences make an absolute mess of syntax and require being re-read multiple times. It definitely assumes you have a firm grasp of statistical concepts and vocabulary (they will use a lot of interchangeable synonyms throughout). It's based on using XLminer which is just as much of a headache and a pain. Look in Excel add-ons for XLminer and read those reviews to get a better picture. The authors do not explain how to use XLminer very well and there are many issues when using on Excel 365 online. I'll be removing XLminer as soon as my classes are done. This book was required for a course, but there is better material out there.


