- Shopping Bag ( 0 items )
Other sellers (Paperback)
-
All (10) from $58.97
-
New (6) from $99.2
-
Used (4) from $58.97
More About This Textbook
Overview
The most thorough and up-to-date introduction to data mining techniques using SAS Enterprise Miner.
The Sample, Explore, Modify, Model, and Assess (SEMMA) methodology of SAS Enterprise Miner is an extremely valuable analytical tool for making critical business and marketing decisions. Until now, there has been no single, authoritative book that explores every node relationship and pattern that is a part of the Enterprise Miner software with regard to SEMMA design and data mining analysis.
Data Mining Using SAS Enterprise Miner introduces readers to a wide variety of data mining techniques and explains the purpose of-and reasoning behind-every node that is a part of the Enterprise Miner software. Each chapter begins with a short introduction to the assortment of statistics that is generated from the various nodes in SAS Enterprise Miner v4.3, followed by detailed explanations of configuration settings that are located within each node. Features of the book include:
This book is a well-crafted study guide on the various methods employed to randomly sample, partition, graph, transform, filter, impute, replace, cluster, and process data as well as interactively group and iteratively process data while performing a wide variety of modeling techniques within the process flow of the SAS Enterprise Miner software. Data Mining Using SAS Enterprise Miner is suitable as a supplemental text for advanced undergraduate and graduate students of statistics and computer science and is also an invaluable, all-encompassing guide to data mining for novice statisticians and experts alike.
Editorial Reviews
From the Publisher
“The book provides a good account of the numerical and computational approaches used within the various nodes and explains necessary background concepts.”(The American Statician, May 2009)"…a very detailed user guide." (MAA Reviews, December 26, 2007)
Product Details
Related Subjects
Meet the Author
Randall Matignon, MS, is Senior Clinical SAS / Microsoft Office VBA Programmer for Amgen, Inc. in San Francisco, California. He has over twenty years of experience as a statistical programmer and applications developer in the pharmaceutical, healthcare, and biotechnology industries, and he has a broad knowledge of several programming languages, including SAS, S-Plus, and PL-SQL.
Table of Contents
Introduction
Chapter 1: Sample Nodes 1
1.1 Input Data Source Node 3
1.2 Sampling Node 32
1.3 Data Partition Node 45
Chapter 2: Explore Nodes 55
2.1 Distribution Explorer Node 57
2.2 Multiplot Node 64
2.3 Insight Node 74
2.4 Association Node 75
2.5 Variable Selection Node 99
2.6 Link Analysis Node 120
Chapter 3: Modify Nodes 153
3.1 Data Set Attributes Node 155
3.2 Transform Variables Node 160
3.3 Filter Outliers Node 169
3.4 Replacement Node 178
3.5 Clustering Node 192
3.6 SOMiKohonen Node 227
3.7 Time Series Node 248
3.8 Interactive Grouping Node 261
Chapter 4: Model Nodes 277
4.1 Regression Node 279
4.2 Model Manager 320
4.3 Tree Node 324
4.4 Neural Network Node 355
4.5 PrincompiDmneural Node 420
4.6 User Defined Node 443
4.7 Ensemble Node 450
4.8 Memory-Based Reasoning Node 460
4.9 Two Stage Node 474
Chapter 5: Assess Nodes 489
5.1 Assessment Node 491
5.2 Reporter Node 511
Chapter 6: Scoring Nodes 515
6.1 Score Node 517
Chapter 7: Utility Nodes 525
7.1 Group Processing Node 527
7.2 Data Mining Database Node 537
7.3 SAS Code Node 541
7.4 Control point Node 552
7.5 Subdiagram Node 553
References 557
Index 560