TY - BOOK AU - Shmueli, Galit AU - Patel, Nitin R. TI - Data mining for business intelligence: concepts, techniques and applications in Microsoft Office Excel with XLMiner SN - 9788126517589 U1 - 005.54 PY - 2016/// CY - New Delhi PB - Wiley India Pvt. Ltd. KW - Data mining N1 - Foreword Preface Acknowledgments 1. Introduction 2. Overview of the Data Mining Process 3. Data Exploration and Dimension Reduction 4. Evaluating Classification and Predictive Performance 5. Multiple Linear Regression 6. Three Simple Classification Methods 7. Classification and Regression trees 8. Logistic Regression 9. Neural Nets 10. Discriminant Analysis 11. Association Rules 12. Cluster Analysis 13. Cases References Index N2 - Description This book arose out of a data mining course at MIT’s Sloan School of Management. Preparation for the course revealed that there are a number of excellent books on the business context of data mining, but their coverage of the statistical and machine learning algorithms and theoretical underpinnings is not sufficiently detailed to provide a practical guide for users who possess the raw skills and tools to analyze data. This book is intended for the business student (and practitioner) of data mining techniques, and the goal is threefold: (1) to provide both a theoretical and practical understanding of the key methods of classification, prediction, reduction and exploration that are at the heart of data mining; (2) to provide a business decision-making context for these methods; and (3) using real business cases and data, to illustrate the application and interpretation of these methods. The book employs the use of an Excel® add-in, XLMinerTM, at no cost to registered instructors, in order to illustrate and interpret the various data sets that are presented throughout. Real-life business cases are also presented so that readers can implement algorithms with a very low learning hurdle ER -