Data Mining for Business Intelligence, 2nd Edition Front Cover

Data Mining for Business Intelligence, 2nd Edition

  • Length: 428 pages
  • Edition: 2
  • Publisher:
  • Publication Date: 2010-10-26
  • ISBN-10: 0470526823
  • ISBN-13: 9780470526828
  • Sales Rank: #479450 (See Top 100 Books)
Description

Data Mining for Business Intelligence: Concepts, Techniques, and Applications in Microsoft Office Excel with XLMiner

Incorporating a new focus on data visualization and time series forecasting, Data Mining for Business Intelligence, Second Edition continues to supply insightful, detailed guidance on fundamental data mining techniques. This new edition guides readers through the use of the Microsoft Office Excel add-in XLMiner for developing predictive models and techniques for describing and finding patterns in data.
From clustering customers into market segments and finding the characteristics of frequent flyers to learning what items are purchased with other items, the authors use interesting, real-world examples to build a theoretical and practical understanding of key data mining methods, including classification, prediction, and affinity analysis as well as data reduction, exploration, and visualization.
The Second Edition now features:

  • Three new chapters on time series forecasting, introducing popular business forecasting methods including moving average, exponential smoothing methods; regression-based models; and topics such as explanatory vs. predictive modeling, two-level models, and ensembles
  • A revised chapter on data visualization that now features interactive visualization principles and added assignments that demonstrate interactive visualization in practice
  • Separate chapters that each treat k-nearest neighbors and Naïve Bayes methods
  • Summaries at the start of each chapter that supply an outline of key topics

The book includes access to XLMiner, allowing readers to work hands-on with the provided data. Throughout the book, applications of the discussed topics focus on the business problem as motivation and avoid unnecessary statistical theory. Each chapter concludes with exercises that allow readers to assess their comprehension of the presented material. The final chapter includes a set of cases that require use of the different data mining techniques, and a related Web site features data sets, exercise solutions, PowerPoint slides, and case solutions.
Data Mining for Business Intelligence, Second Edition is an excellent book for courses on data mining, forecasting, and decision support systems at the upper-undergraduate and graduate levels. It is also a one-of-a-kind resource for analysts, researchers, and practitioners working with quantitative methods in the fields of business, finance, marketing, computer science, and information technology.

Table of Contents

Part One: Preliminaries
Chapter 1: Introduction
Chapter 2: Overview of the Data Mining Process

Part Two: Data Exploration and Dimension Reduction
Chapter 3: Data Visualization
Chapter 4: Dimension Reduction

Part Three: Performance Evaluation
Chapter 5: Evaluating Classification and Predictive Performance

Part Four: Prediction and Classification Methods
Chapter 6: Multiple Linear Regression
Chapter 7: k-Nearest Neighbors (k-NN)
Chapter 8: Naive Bayes
Chapter 9: Classification and Regression Trees
Chapter 10: Logistic Regression
Chapter 11: Neural Nets
Chapter 12: Discriminant Analysis

Part Five: Mining Relationships Among Records
Chapter 13: Association Rules
Chapter 14: Cluster Analysis

Part Six: Forecasting Time Series
Chapter 15: Handling Time Series
Chapter 16: Regression-Based Forecasting
Chapter 17: Smoothing Methods

Part Seven: Cases
Chapter 18: Cases

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