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Machine Learning for Business Analytics - Galit Shmueli, Peter C. Bruce, Kuber R. Deokar, Nitin R. Patel

Machine Learning for Business Analytics

Concepts, Techniques, and Applications with Analytic Solver Data Mining
Buch | Hardcover
624 Seiten
2023 | 4th edition
John Wiley & Sons Inc (Verlag)
978-1-119-82983-6 (ISBN)
CHF 185,65 inkl. MwSt
MACHINE LEARNING FOR BUSINESS ANALYTICS 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.

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.

Foreword xix

Preface to the Fourth Edition xxi

Acknowledgments xxv

PART I PRELIMINARIES

CHAPTER 1 Introduction 3

CHAPTER 2 Overview of the Machine Learning Process 15

PART II DATA EXPLORATION AND DIMENSION REDUCTION

CHAPTER 3 Data Visualization 59

CHAPTER 4 Dimension Reduction 91

PART III PERFORMANCE EVALUATION

CHAPTER 5 Evaluating Predictive Performance 115

PART IV PREDICTION AND CLASSIFICATION METHODS

CHAPTER 6 Multiple Linear Regression 151

CHAPTER 7 k-Nearest-Neighbors (k-NN) 169

CHAPTER 8 The Naive Bayes Classifier 181

CHAPTER 9 Classification and Regression Trees 197

CHAPTER 10 Logistic Regression 229

CHAPTER 11 Neural Nets 257

CHAPTER 12 Discriminant Analysis 283

CHAPTER 13 Generating, Comparing, and Combining Multiple Models 303

PART V INTERVENTION AND USER FEEDBACK

CHAPTER 14 Experiments, Uplift Modeling, and Reinforcement Learning 319

PART VI MINING RELATIONSHIPS AMONG RECORDS

CHAPTER 15 Association Rules and Collaborative Filtering 341

CHAPTER 16 Cluster Analysis 369

PART VII FORECASTING TIME SERIES

CHAPTER 17 Handling Time Series 401

CHAPTER 18 Regression-Based Forecasting 415

CHAPTER 19 Smoothing Methods 445

PART VIII DATA ANALYTICS

CHAPTER 20 Social Network Analytics 467

CHAPTER 21 Text Mining 487

CHAPTER 22 Responsible Data Science 507

PART IX CASES

CHAPTER 23 Cases 537

References 575

Data Files Used in the Book 577

Index 579

Erscheinungsdatum
Verlagsort New York
Sprache englisch
Maße 185 x 254 mm
Gewicht 1383 g
Themenwelt Informatik Datenbanken Data Warehouse / Data Mining
Informatik Office Programme Outlook
Technik Elektrotechnik / Energietechnik
ISBN-10 1-119-82983-6 / 1119829836
ISBN-13 978-1-119-82983-6 / 9781119829836
Zustand Neuware
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