The paper presents a method of association rules discovering from medical data using the evolutionary approach. The elaborated method (EGAR) uses a genetic algorithm as a tool of knowledge discovering from a set of data, in the form of association rules. The method is compared with known and common method - FPTree. The developed computer program is applied for testing the proposed method and comparing the results with those produced by FPTree. The program is the general and flexible tool for the rules generation task using different data sets and two embodied methods. The presented experiments are performed using the actual medical data from the Wroclaw Clinic
Abstract. Data Mining is most commonly used in attempts to induce association rules from transac-tio...
AbstractIn the performance of data mining and knowledge discovery activities, rough set theory has b...
Searching for patterns in large database is one of the major tasks in data mining. This can be achie...
The paper presents a method of association rules discovering from medical data using the evolutionar...
Abstract-This article is mainly discussing the application of genetic algorithms to data mining of a...
In the paper the method called CGA based on a cooperating genetic algorithm is presented. The CGA is...
Data mining, referred to as knowledge discovery in databases (KDD), is the nontrivial process of ide...
Abstract Association rules [4] usually found out the relationship between different data entities in...
This PHD thesis deals with the evolutionary algorithms for mining frequent patterns and discovering ...
Data mining has become an important research topic. The increasing use of computer results in an exp...
Abstract-- Association Rule Mining for profit patterns focuses the important issues related with bus...
The process of automatically extracting novel, useful and ultimately comprehensible information from...
Data Mining is most commonly used in attempts to induce association rules from transac- tion data w...
Association Rule mining is very efficient technique for finding strong relation between correlated d...
We formulate a general Association rule mining model for extracting useful information from very lar...
Abstract. Data Mining is most commonly used in attempts to induce association rules from transac-tio...
AbstractIn the performance of data mining and knowledge discovery activities, rough set theory has b...
Searching for patterns in large database is one of the major tasks in data mining. This can be achie...
The paper presents a method of association rules discovering from medical data using the evolutionar...
Abstract-This article is mainly discussing the application of genetic algorithms to data mining of a...
In the paper the method called CGA based on a cooperating genetic algorithm is presented. The CGA is...
Data mining, referred to as knowledge discovery in databases (KDD), is the nontrivial process of ide...
Abstract Association rules [4] usually found out the relationship between different data entities in...
This PHD thesis deals with the evolutionary algorithms for mining frequent patterns and discovering ...
Data mining has become an important research topic. The increasing use of computer results in an exp...
Abstract-- Association Rule Mining for profit patterns focuses the important issues related with bus...
The process of automatically extracting novel, useful and ultimately comprehensible information from...
Data Mining is most commonly used in attempts to induce association rules from transac- tion data w...
Association Rule mining is very efficient technique for finding strong relation between correlated d...
We formulate a general Association rule mining model for extracting useful information from very lar...
Abstract. Data Mining is most commonly used in attempts to induce association rules from transac-tio...
AbstractIn the performance of data mining and knowledge discovery activities, rough set theory has b...
Searching for patterns in large database is one of the major tasks in data mining. This can be achie...