Title
A unified approach for discovery of interesting association rules in medical databases
Abstract
Association rule discovery is an important technique for mining knowledge from large databases. Data mining researchers have studied subjective measures of interestingness to reduce the volume of discovered rules and to improve the overall efficiency of the knowledge discovery in databases process (KDD). The objective of this paper is to provide a framework that uses subjective measures of interestingness to discover interesting patterns from association rules algorithms. The framework works in an environment where the medical databases are evolving with time. In this paper we consider a unified approach to quantify interestingness of association rules. We believe that the expert mining can provide a basis for determining user threshold which will ultimately help us in finding interesting rules. The framework is tested on public datasets in medical domain and results are promising.
Year
DOI
Venue
2006
10.1007/11790853_5
Industrial Conference on Data Mining
Keywords
Field
DocType
unified approach,framework work,medical databases,large databases,expert mining,data mining researcher,subjective measure,databases process,association rule,association rule discovery,interesting association rule,association rules algorithm,data mining,domain knowledge
Data science,Data mining,Association rule discovery,Domain knowledge,Computer science,Association rule learning,Information extraction,Correlation and dependence,Knowledge extraction,Knowledge base,Database
Conference
Volume
ISSN
ISBN
4065
0302-9743
3-540-36036-0
Citations 
PageRank 
References 
2
0.42
21
Authors
4
Name
Order
Citations
PageRank
Harleen Kaur1385.58
Siri Krishan Wasan2356.76
Ahmed Sultan Al-Hegami3101.30
Vasudha Bhatnagar418117.69