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H-mine: Hyper-structure mining of frequent patterns in large databases
Jian Pei
,
Jiawei Han
, Hongjun Lu
, Shojiro Nishio
, Shiwei Tang
, Dongqing Yang
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Keyphrases
Large Database
100%
Frequent Patterns
100%
Structure Mining
100%
H-mine
100%
Hyperstructure
100%
Data Mining Techniques
66%
Memory-based
66%
Mining Method
66%
High Performance
33%
Disk-shaped
33%
Distinctive Features
33%
Structure H
33%
Performance Bottleneck
33%
Dynamically Adjust
33%
Strong Impact
33%
FP-tree
33%
Data Characteristics
33%
Efficient Mining
33%
Scalable Data Mining
33%
Data Mining Methodology
33%
Short Patterns
33%
Pattern Memory
33%
Database Partitioning
33%
Computer Science
Data Structure
100%
Frequent Patterns
100%
Mining Process
100%
Data Mining
50%
Future Development
50%
Data Mining Technique
50%
Performance Bottleneck
50%
Space Overhead
50%
Data Characteristic
50%
FP tree
50%
Very Large Database
50%
Memory Pattern
50%