Data Mining for the Masses Front Cover

Data Mining for the Masses

  • Length: 264 pages
  • Edition: 1
  • Publisher:
  • Publication Date: 2012-08-18
  • ISBN-10: 0615684378
  • ISBN-13: 9780615684376
  • Sales Rank: #1296007 (See Top 100 Books)
Description

Have you ever found yourself working with a spreadsheet full of data and wishing you could make more sense of the numbers? Have you reviewed sales or operations reports, wondering if there’s a better way to anticipate your customers’ needs? Perhaps you’ve even thought to yourself: There’s got to be more to these figures than what I’m seeing!

Data Mining can help, and you don’t need a Ph.D. in Computer Science to do it. You can forecast staffing levels, predict demand for inventory, even sift through millions of lines of customer emails looking for common themes—all using data mining. It’s easier than you might think.

In Data Mining for the Masses, professor Matt North—a former risk analyst and database developer for eBay.com—uses simple examples, clear explanations and free, powerful, easy-to-use software to teach you the basics of data mining; techniques that can help you answer some of your toughest business questions.

You’ve got data and you know it’s got value, if only you can figure out how to unlock it. This book can show you how. Let’s start digging!

Through an agreement with the Global Text Project, an electronic version of this text is available online at (http://globaltext.terry.uga.edu/books). Proceeds from the sales of printed copies through Amazon enable the author to support the Global Text Project’s goal of making electronic texts available to students in developing economies.

Table of Contents

SECTION ONE: Data Mining Basics
Chapter One: Introduction to Data Mining and CRISP-DM
Chapter Two: Organizational Understanding and Data Understanding
Chapter Three: Data Preparation

SECTION TWO: Data Mining Models and Methods
Chapter Four: Correlation
Chapter Five: Association Rules
Chapter Six: k-Means Clustering
Chapter Seven: Discriminant Analysis
Chapter Eight: Linear Regression
Chapter Nine: Logistic Regression
Chapter Ten: Decision Trees
Chapter Eleven: Neural Networks
Chapter Twelve: Text Mining

SECTION THREE: Special Considerations in Data Mining
Chapter Thirteen: Evaluation and Deployment
Chapter Fourteen: Data Mining Ethics

To access the link, solve the captcha.
Subscribe