Demystifying AI: Data Science and Machine Learning Using IBM SPSS Modeler
As artificial intelligence advances at an exponential pace, understanding data science and machine learning has become increasingly essential. Yet, the wide range of available resources can be daunting, posing challenges for beginners. This second book builds on the foundation laid in the first, Data Science and Machine Learning for Non-Programmers: Using SAS Enterprise Miner, providing similar fundamental knowledge of data science and machine learning in an accessible way. It is specifically designed to cater to readers who prefer a hands-on guide using SPSS Modeler, a widely popular software that does not require coding or programming skills. Like the first book, this volume helps learners from various non-technical fields gain practical insight into machine learning but shifts the focus to a different tool for those seeking alternatives to coding.

In this book, readers are guided through practical implementations using real datasets and SPSS Modeler, a user-friendly data mining tool. The approach remains consistent with a focus on application, providing step-by-step instructions for all stages of the data mining process using two large datasets, ensuring continuity and reinforcing concepts in a cohesive project framework. This book also offers practical advice on presenting data mining results effectively, aiding readers in communicating insights clearly to stakeholders.

Together with the first book, this volume is a companion for beginners and experienced practitioners alike. It targets a broad audience, including students, lecturers, researchers, and industry professionals. It offers flexibility in learning pathways and deepens understanding of data science using easy-to-follow, software-based approaches.

1147760417
Demystifying AI: Data Science and Machine Learning Using IBM SPSS Modeler
As artificial intelligence advances at an exponential pace, understanding data science and machine learning has become increasingly essential. Yet, the wide range of available resources can be daunting, posing challenges for beginners. This second book builds on the foundation laid in the first, Data Science and Machine Learning for Non-Programmers: Using SAS Enterprise Miner, providing similar fundamental knowledge of data science and machine learning in an accessible way. It is specifically designed to cater to readers who prefer a hands-on guide using SPSS Modeler, a widely popular software that does not require coding or programming skills. Like the first book, this volume helps learners from various non-technical fields gain practical insight into machine learning but shifts the focus to a different tool for those seeking alternatives to coding.

In this book, readers are guided through practical implementations using real datasets and SPSS Modeler, a user-friendly data mining tool. The approach remains consistent with a focus on application, providing step-by-step instructions for all stages of the data mining process using two large datasets, ensuring continuity and reinforcing concepts in a cohesive project framework. This book also offers practical advice on presenting data mining results effectively, aiding readers in communicating insights clearly to stakeholders.

Together with the first book, this volume is a companion for beginners and experienced practitioners alike. It targets a broad audience, including students, lecturers, researchers, and industry professionals. It offers flexibility in learning pathways and deepens understanding of data science using easy-to-follow, software-based approaches.

120.0 Pre Order
Demystifying AI: Data Science and Machine Learning Using IBM SPSS Modeler

Demystifying AI: Data Science and Machine Learning Using IBM SPSS Modeler

by Dothang Truong
Demystifying AI: Data Science and Machine Learning Using IBM SPSS Modeler

Demystifying AI: Data Science and Machine Learning Using IBM SPSS Modeler

by Dothang Truong

Hardcover

$120.00 
  • SHIP THIS ITEM
    Available for Pre-Order. This item will be released on December 16, 2025

Related collections and offers


Overview

As artificial intelligence advances at an exponential pace, understanding data science and machine learning has become increasingly essential. Yet, the wide range of available resources can be daunting, posing challenges for beginners. This second book builds on the foundation laid in the first, Data Science and Machine Learning for Non-Programmers: Using SAS Enterprise Miner, providing similar fundamental knowledge of data science and machine learning in an accessible way. It is specifically designed to cater to readers who prefer a hands-on guide using SPSS Modeler, a widely popular software that does not require coding or programming skills. Like the first book, this volume helps learners from various non-technical fields gain practical insight into machine learning but shifts the focus to a different tool for those seeking alternatives to coding.

In this book, readers are guided through practical implementations using real datasets and SPSS Modeler, a user-friendly data mining tool. The approach remains consistent with a focus on application, providing step-by-step instructions for all stages of the data mining process using two large datasets, ensuring continuity and reinforcing concepts in a cohesive project framework. This book also offers practical advice on presenting data mining results effectively, aiding readers in communicating insights clearly to stakeholders.

Together with the first book, this volume is a companion for beginners and experienced practitioners alike. It targets a broad audience, including students, lecturers, researchers, and industry professionals. It offers flexibility in learning pathways and deepens understanding of data science using easy-to-follow, software-based approaches.


Product Details

ISBN-13: 9781032740003
Publisher: CRC Press
Publication date: 12/16/2025
Series: Chapman & Hall/CRC Data Mining and Knowledge Discovery Series
Pages: 600
Product dimensions: 7.00(w) x 10.00(h) x (d)

About the Author

Dr. Dothang Truong is the Associate Dean and Professor of Graduate Studies at Embry Riddle Aeronautical University, Daytona Beach, Florida. He has extensive teaching and research experience in machine learning, artificial intelligence, data analytics, air transportation management, and supply chain management. In 2022, Dr. Truong received the Frank Sorenson Award for the outstanding achievement of excellence in aviation research and scholarship.

Table of Contents

PART I: INTRODUCTION TO DATA MINING.   1. Introduction to Data Mining and Data Science.   2. Data Mining Process, Methods, and Software.   3. Data Sampling and Partitioning.   4. Data Visualization and Exploration.   5. Data Modification.   PART II: DATA MINING METHODS.   6. Model Evaluation.   7. Regression Methods.   8. Decision Trees.   9. Neural Networks.   10. Ensemble Modeling.   11. Presenting Results and Writing Data Mining Reports.   12. Principal Component Analysis.   13. Cluster Analysis.   PART III: ADVANCED DATA MINING METHODS.   14. Random Forest.   15. Gradient Boosting.   16. Bayesian Networks.

From the B&N Reads Blog

Customer Reviews