DATA MINING
Desktop Survival Guide
by
Graham Williams
Desktop Survival
Project Home
List of Figures
List of Tables
Data Mining
Data Mining
Data Mining with Rattle
Introduction
Data
Transform
Explore
A Model Building Framework
Unsupervised Modelling
Two Class Models
Multi Class Models
Regression Models
Text Mining
Evaluation and Deployment
Moving into R
Troubleshooting
R for the Data Miner
R
Data
Graphics in R
Understanding Data
Preparing Data
Building Models
Evaluating Models
Algorithms
Apriori
Bagging
Bayes Classifier
Boosting
Cluster Analysis
Conditional Trees
Hierarchical Clustering
K-Means
K-Nearest Neighbours
Linear Models
Logistic Regression
Neural Networks
Support Vector Machines
Text Mining
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
Glossary
Bibliography
Index
Algorithms
Subsections
Apriori
Summary
Overview
Algorithm
Examples
Video Marketing: Transactions From File
Survey Data: Data Preparation
Other Examples
Resources and Further Reading
Bagging
Summary
Overview
Example
Algorithm
Resources and Further Reading
Bayes Classifier
Summary
Example
Algorithm
Resources and Further Reading
Boosting
Summary
Overview
AdaBoost Algorithm
Examples
Step by Step
Using gbm
Resources and Further Reading
Bootstrapping
Summary
Usage
Further Information
Cluster Analysis
Discriminant Coordinates Plot
K Means Option
Summary
Clusters
Basic Clustering
Hot Spots
Alternative Clustering
Hierarchical Clustering
Summary
Examples
Resources and Further Reading
Conditional Trees
Summary
Algorithm
Examples
Resources and Further Reading
Decision Tree Induction
Summary
Algorithm
Examples
Simple Example
Convert Tree to Rules
Predicting Wine Type
Predicting Salary Group
Predicting Fraud: Underrepresented Classes
Alternatives and Enhancements
Resources and Further Reading
Hierarchical Clustering
Summary
Examples
Resources and Further Reading
K-Means
Summary
Clusters
Basic Clustering
Hot Spots
Alternative Clustering
K-Nearest Neighbours
Summary
Resources and Further Reading
Linear Models
Linear Model
Logistic Regression
Summary
Linear Model
Resources and Further Reading
Neural Networks
Overview
Algorithm
Neural Network
Resources and Further Reading
Random Forests
Resources and Further Reading
SVM
Overview
Examples
Resources and Further Reading
Overview
Examples
Resources and Further Reading
Text Mining
Text Mining with R
Copyright © 2004-2006
[email protected]
Support further development through the
purchase of the PDF
version of the book.
Brought to you by
Togaware
.