Customer Segmentation and Clustering Using SAS Enterprise Miner, Second Edition
Price includes NZ wide delivery!
|Format: ||Paperback, 378 pages, 2nd edition Edition|
|Other Information: ||1, black & white illustrations|
|Published In: ||United States, 15 November 2011|
Understanding the customer is critical to your company's success. In Customer Segmentation and Clustering Using SAS Enterprise Miner, Second Edition, Randy Collica employs SAS Enterprise Miner and the most commonly available techniques for customer relationship management (CRM). You will learn how to segment customers more intelligently and to achieve, or at least get closer to, the one-to-one customer relationship that today's businesses want. Step-by-step examples and exercises clearly illustrate the concepts of segmentation and clustering in the context of CRM. The book reviews the basics of segmentation and clustering at an introductory level, providing examples from a variety of industries; offers an in-depth treatment of segmentation with practical topics such as when and how to update your models and clustering with many attributes; and then goes beyond traditional segmentation practices to introduce recommended strategies for clustering product affinities, handling missing data, and incorporating textual records into your predictive model with SAS Text Miner software. Updates to the second edition include new chapters that introduce some new and advanced analytic techniques that can be valuable in many customer segmentation applications. In addition, the book contains a new section on using the Imputation node in SAS Enterprise Miner to accomplish missing data imputation. Also included are business insights and motivations for selection settings and analytical decisions on many of the examples included in this second edition. This straightforward guide will appeal to anyone who seeks to better understand customers or prospective customers. Additionally, professors and students will find the book well suited for a business data mining analytics course in an MBA program or related course of study. You should understand basic statistics, but no prior knowledge of data mining or SAS Enterprise Miner is required.
28 x 21 x 1 centimetres (0.85 kg)|
15+ years |