Marketing analysts use data mining techniques to gain a reliable understanding of customer buying habits and then use that information to develop new marketing campaigns and products. Visual mining tools introduce a world of possibilities to a much broader and non-technical audience to help them solve common business problems.
Describes how to prepare and transform raw business data into business data sets, then use data visualization and visual data mining techniques to analyze the prepared data sets. The data visualization tools include bar graphs, histograms, pie charts, and tree graphs. Among the data mining tools discussed are decision trees, linear regression models, and self-organizing maps. A customer retention case study illustrates the entire process. Annotation c. Book News, Inc., Portland, OR
More Reviews and RecommendationsTOM SOUKUP has more than fifteen years of experience in data management and analysis. He is currently with Konami Gaming, Inc., where he is involved in data mining and data warehousing projects for the gaming industry.
IAN DAVIDSON, PhD, has worked on commercial data mining applications, including insurance claim fraud detection, product cross-sell, customer retention, and credit card fraud detection. He is currently an Assistant Professor of Computer Science at the State University of New York, Albany.
Reader Rating:
See Detailed Ratings
August 24, 2002: Great book. This book tells you exactly how to do data mining. From how to map business questions on to data mining tasks to how to deploy and monitor data mining models. The various other books on data mining are good for understanding the maths behind the algorithms, but didn't tell me how to use them. This book does this.
Reader Rating:
See Detailed Ratings
July 13, 2002: To my knowledge this is the only book on data mining that takes you through all the steps of the data mining cycle. The authors have clearly done data mining in the real world and understand that data preparation and model deployment and monitoring are just as important to the success of a project as is building the most accurate model. Highly recommended. The books is applicable to most data mining projects, not just those centered around visualization.