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Contents
List of Examples
List of Figures
List of Tables
Title and Copyright Information
Preface
Audience
Documentation Accessibility
Related Documentation
Conventions
What's New in the Oracle Data Mining APIs?
Oracle Data Mining 11
g
Release 2 (11.2.0.3) API New Features
Oracle Data Mining 11
g
Release 2 (11.2.0.1) API New Features
1
Data Mining API Use Cases
Analyze Customer Demographics and Buying Patterns
Segment Customer Base and Predict Attrition
Predict Missing Incomes
Find Anomalies in the Customer Data
Find the Top 10 Outliers
Compute the Probability of a New Customer Being a Typical Affinity Card Member
Find the Demographics of a Typical Affinity Card Member
Evaluate the Success of a Marketing Campaign
Use Predictive Analytics to Create a Customer Profile
2
A Tour of the Data Mining APIs
Data Mining PL/SQL Packages
DBMS_DATA_MINING
CREATE_MODEL
APPLY
DBMS_DATA_MINING_TRANSFORM
DBMS_PREDICTIVE_ANALYTICS
Data Mining Data Dictionary Views
Data Mining SQL Functions
Data Mining Java API
The JDM Standard
Oracle Extensions to JDM
Principal Objects in the Oracle Data Mining Java API
Physical Data Set
Build Settings
Task
Model
Test Metrics
Apply Settings
Transformation Sequence
3
Creating the Case Table
Requirements
Column Data Types
Data Sets for Data Mining
About Attributes
Data Attributes and Model Attributes
Target Attribute
Numericals and Categoricals
Model Signature
ALL_MINING_MODEL_ATTRIBUTES
Scoping of Model Attribute Name
Model Details
Nested Data
Nested Object Types
DM_NESTED_NUMERICALS
DM_NESTED_CATEGORICALS
Example: Transforming Transactional Data for Mining
Example: Creating a Nested Column for Mining
Market Basket Data
Missing Data
How Oracle Data Mining Interprets Missing Data
Examples: Missing Values or Sparse Data?
Sparsity in a Sales Table
Missing Values in a Table of Customer Data
How Oracle Data Mining Treats Missing Data
Attribute Transformation and Missing Data Treatment
4
Preparing Text for Mining
Oracle Text Routines for Term Extraction
Term Extraction in the Sample Programs
From Unstructured Data to Structured Data
Steps in the Term Extraction Process
Transform a Text Column in the Build Table
Transform a Text Column in the Test and Apply Tables
Create the Index and Index Preference
Create the Intermediate Terms Table
FEATURE_PREP Calling Syntax
FEATURE_PREP Return Value
FEATURE_PREP Arguments
FEATURE_PREP Example
Create the Final Terms Table
FEATURE_EXPLAIN Calling Syntax
FEATURE_EXPLAIN Return Value
FEATURE_EXPLAIN Arguments
FEATURE_EXPLAIN Example
Populate a Nested Table Column
Example: Transforming a Text Column
5
Building a Model
Steps in Building a Model
Model Settings
Specifying a Settings Table
Specifying the Algorithm
Specifying Costs
Specifying Prior Probabilities
Specifying Class Weights
Model Settings in the Data Dictionary
Creating a Model
Mining Functions
Transformation List
Model Details
Mining Model Schema Objects
Mining Models in the Data Dictionary
Mining Model Privileges
Sample Mining Models
6
Scoring and Deployment
In-Database Scoring
What is Deployment?
Real-Time Scoring
Prediction
Best Prediction
Confidence Bounds (GLM only)
Costs
Rules (Decision Tree only)
Probability
Per-Class Results
Clustering
Cluster Identifier
Probability
Per-Cluster Probabilities
Feature Extraction
Feature Identifier
Match Quality
Per-Feature Values
Save Scoring Results in a Table
Cost-Sensitive Decision Making
Batch Apply
Comparing APPLY and SQL Scoring Functions
7
The Data Mining Java API
The Java Environment
Connecting to the Data Mining Engine
Connection Factory
Create ConnectionFactory Using OraConnectionFactory
Lookup ConnectionFactory From the JNDI Server
Connect Using JDBC
Connect Using ConnectionSpec
Features of a DME Connection
Create Object Factories
Provide Access to Mining Object Metadata
Persistence and Retrieval of Mining Objects
Execute Mining Tasks
Retrieve DME Capabilities and Metadata
Retrieve Version Information
API Design Overview
Describing the Mining Data
Build Settings
Enable Automated Data Preparation
Executing Mining Tasks
Creating Mining Task Workflows
Building a Mining Model
Exploring Model Details
Testing a Model
Applying a Model for Scoring Data
Using a Cost Matrix
Using Prior Probabilities
Embedded Transformations
Embed Single-Expression Transformations
Embed Complex Sequence of Transformations
Using Predictive Analytics Tasks: Predict, Explain, and Profile
Preparing the Data
Using Binning/Discretization Transformation
Using Normalization Transformation
Using Clipping Transformation
Using Text Transformation
Index
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