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Oracle® Data Mining Concepts
10
g
Release 2 (10.2)
Part Number B14339-01
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Contents
List of Figures
List of Tables
Title and Copyright Information
Preface
Intended Audience
Documentation Accessibility
Related Documents
Conventions
1
Introduction to Oracle Data Mining
1.1
What is Data Mining?
1.2
What Is Data Mining in the Database?
1.3
What Is Oracle Data Mining?
1.3.1
Data Mining Functions
1.4
New Features
2
Data for Oracle Data Mining
2.1
Data, Cases, and Attributes
2.2
Data Requirements
2.2.1
ODM Data Table Format
2.2.2
Column Data Types Supported by ODM
2.2.2.1
Nested Columns in ODM
2.2.3
Missing Values
2.2.3.1
Missing Values and NULL Values in ODM
2.2.3.2
Missing Value Handling
2.2.4
Sparse Data
2.2.5
Outliers and Oracle Data Mining
2.3
Data Preparation
2.3.1
Winsorizing and Trimming
2.3.2
Binning (Discretization)
2.3.2.1
Methods for Computing Bin Boundaries
2.3.3
Normalization
3
Supervised Data Mining
3.1
Classification
3.1.1
Algorithms for Classification
3.1.1.1
Decision Tree Algorithm
3.1.1.2
Naive Bayes Algorithm
3.1.1.3
Adaptive Bayes Network Algorithm
3.1.1.4
Support Vector Machine Algorithm
3.1.2
Data Preparation for Classification
3.1.2.1
Outliers
3.1.2.2
NULL Values
3.1.2.3
Normalization
3.1.3
Costs
3.1.4
Priors
3.2
Regression
3.2.1
Algorithm for Regression
3.3
Attribute Importance
3.3.1
Data Preparation for Attribute Importance
3.3.2
Algorithm for Attribute Importance
3.3.2.1
Minimum Description Length Algorithm
3.4
Anomaly Detection
3.4.1
Algorithm for Anomaly Detection
3.4.1.1
Specify the One-Class SVM Algorithm
3.5
Testing Supervised Models
3.5.1
Confusion Matrix
3.5.2
Lift
3.5.3
Receiver Operating Characteristics
3.5.4
Test Metrics for Regression Models
4
Unsupervised Data Mining
4.1
Clustering
4.1.1
Algorithms for Clustering
4.1.1.1
Enhanced
k
-Means Algorithm
4.1.1.2
Orthogonal Partitioning Clustering (O-Cluster) Algorithm
4.1.1.3
Outliers and Clustering
4.1.1.4
K
-Means and O-Cluster Comparison
4.2
Association
4.2.1
Data for Association Models
4.2.2
Difficult Cases for Associations
4.2.2.1
Finding Associations Involving Rare Events
4.2.3
Algorithm for Associations
4.3
Feature Extraction
4.3.1
Algorithm for Feature Extraction
4.3.1.1
NMF for Text Mining
4.3.1.2
Data Preparation for NMF
5
Data Mining Process
5.1
How Is Data Mining Done?
5.2
How Does Oracle Data Mining Support Data Mining?
5.2.1
Java and PL/SQL Interfaces
5.2.2
Automated Data Mining
5.2.3
Data Mining Functions
5.2.4
Graphical Interfaces
5.2.5
Model Deployment
6
Text Mining Using Oracle Data Mining
6.1
What is Text Mining?
6.1.1
Document Classification
6.2
ODM Support for Text Mining
6.2.1
Classification and Text Mining
6.2.2
Clustering and Text Mining
6.2.3
Feature Extraction and Text Mining
6.2.4
Association and Text Mining
6.2.5
Regression and Text Mining
6.2.6
Anomaly Detection and Text Mining
6.3
Oracle Support for Text Mining
7
Oracle Data Mining Scoring Engine
7.1
ODM Scoring Engine Features
7.2
ODM Scoring Engine Installation
7.3
Scoring in Data Mining Applications
7.4
Moving Data Mining Models
7.5
Using the Oracle Data Mining Scoring Engine
8
Sequence Similarity Search and Alignment (BLAST)
8.1
Bioinformatics Sequence Search and Alignment
8.2
BLAST in the Oracle Database
8.3
Oracle Data Mining Sequence Search and Alignment Capabilities
Glossary
Index
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