DATA MINING
Desktop Survival Guide
by
Graham Williams
Desktop Survival
Project Home
Rattle
Introduction
Getting Started
Interacting with Rattle
Data
Exploring Data
Test
Transforming Data
Cluster Analysis
Data
Graphics in R
Understanding Data
Preparing Data
Descriptive and Predictive Analytics
Issues
Evaluating Models
Reporting
Cluster Analysis
Text Mining
Text Mining
Algorithms
Bagging
Bayes Classifier
Cluster Analysis
Conditional Trees
Hierarchical Clustering
K-Nearest Neighbours
Linear Models
Neural Networks
Support Vector Machines
Open Products
AlphaMiner
Borgelt Data Mining Suite
KNime
R
Rattle
Weka
Closed Products
C4.5
Clementine
Equbits Foresight
GhostMiner
InductionEngine
ODM
Enterprise Miner
Statistica Data Miner
TreeNet
Virtual Predict
Appendicies
Installing Rattle
Glossary
Bibliography
Index
U
Unsupervised Learning
: Classes are not defined a priori (essentially Cluster Analysis).
Copyright © Togaware Pty Ltd
Support further development through the
purchase of the PDF
version of the book.
PDF version is properly formatted and forms a comprehensive book (draft with over 700 pages).
Brought to you by
Togaware
. This page generated: Tuesday, 23 December 2008