Data Mining is most commonly used in attempts to induce association rules from transac- tion data which can help decision-makers easily analyze the data and make good decisions regarding the domains concerned. Most conventional studies are focused on binary or discrete-valued transaction data, however the data in real-world applications usually consists of quantitative values. In the last years, many researches have proposed Genetic Algorithms for mining interesting association rules from quantitative data. In this paper, we present a study of three genetic association rules extraction methods to show their effectiveness for mining quantitative association rules. Experimental results over two real-world databases are showed
National audienceMining association rules in databases has long been studied. However, most research...
National audienceMining association rules in databases has long been studied. However, most research...
National audienceMining association rules in databases has long been studied. However, most research...
Data Mining is most commonly used in attempts to induce association rules from transac- tion data w...
Data Mining is most commonly used in attempts to induce association rules from transac- tion data w...
Data Mining is most commonly used in attempts to induce association rules from transac- tion data w...
Abstract. Data Mining is most commonly used in attempts to induce association rules from transac-tio...
Abstract-- Association Rule Mining for profit patterns focuses the important issues related with bus...
We formulate a general Association rule mining model for extracting useful information from very lar...
Association rule mining problem (ARM) is a struc-tured mechanism for unearthing hidden facts in larg...
In this paper, we propose QUANTMINER, a mining quantitative association rules system. This system is...
The process of discovering interesting and unexpected rules from large data sets is known as associa...
Apriori algorithm is a classic algorithm for frequent item set mining and association rule learning ...
National audienceMining association rules in databases has long been studied. However, most research...
The extraction of useful information for decision making is a challenge in many different domains. A...
National audienceMining association rules in databases has long been studied. However, most research...
National audienceMining association rules in databases has long been studied. However, most research...
National audienceMining association rules in databases has long been studied. However, most research...
Data Mining is most commonly used in attempts to induce association rules from transac- tion data w...
Data Mining is most commonly used in attempts to induce association rules from transac- tion data w...
Data Mining is most commonly used in attempts to induce association rules from transac- tion data w...
Abstract. Data Mining is most commonly used in attempts to induce association rules from transac-tio...
Abstract-- Association Rule Mining for profit patterns focuses the important issues related with bus...
We formulate a general Association rule mining model for extracting useful information from very lar...
Association rule mining problem (ARM) is a struc-tured mechanism for unearthing hidden facts in larg...
In this paper, we propose QUANTMINER, a mining quantitative association rules system. This system is...
The process of discovering interesting and unexpected rules from large data sets is known as associa...
Apriori algorithm is a classic algorithm for frequent item set mining and association rule learning ...
National audienceMining association rules in databases has long been studied. However, most research...
The extraction of useful information for decision making is a challenge in many different domains. A...
National audienceMining association rules in databases has long been studied. However, most research...
National audienceMining association rules in databases has long been studied. However, most research...
National audienceMining association rules in databases has long been studied. However, most research...