Association rule mining is a popular technique used to find associations between attributes in a dataset. When using deterministic algorithms, if the attributes have numerical values the usual approach is to discretize them defining proper intervals. But the discretization can notably affect the quality of the rules generated. This work presents a method based on a deterministic exploration of the interval search space without a previous discretization of the numerical attributes. It has been applied to medical data from an atherosclerosis study. The quality of the obtained rules seems to support this method as a valid alternative for this kind of rule extraction
International audienceBackground: The widespread use of electronic health records (EHRs) has generat...
AbstractThis work describes our experiences on discovering association rules in medical data to pred...
Early detection of patients with lifted danger of creating diabetes mellitus is basic to the enhance...
Association rules are a data mining technique used to discover frequent patterns in a data set. In t...
Association rules represent a promising technique to nd hidden patterns in a medical data set. The m...
We are presently exploring the idea of discovering associa-tion rules in medical data. There are sev...
Abstract. Mining association rules in databases has become a popular task in data mining. However, m...
Numerical attribute management is a usual pre-processing task in data mining. Most of the algorithms...
Numerical analysis naturally finds applications in all fields of engineering and the physical scienc...
Association rule mining typically targets transactional data. In order to process non-transaction da...
International audienceBackground: The widespread use of electronic health records (EHRs) has generat...
AbstractAssociation rules represent a promising technique to improve heart disease prediction. Unfor...
International audienceBackground: The widespread use of electronic health records (EHRs) has generat...
International audienceBackground: The widespread use of electronic health records (EHRs) has generat...
In this paper, we present an improved association rule mining of data mining for the detection of Co...
International audienceBackground: The widespread use of electronic health records (EHRs) has generat...
AbstractThis work describes our experiences on discovering association rules in medical data to pred...
Early detection of patients with lifted danger of creating diabetes mellitus is basic to the enhance...
Association rules are a data mining technique used to discover frequent patterns in a data set. In t...
Association rules represent a promising technique to nd hidden patterns in a medical data set. The m...
We are presently exploring the idea of discovering associa-tion rules in medical data. There are sev...
Abstract. Mining association rules in databases has become a popular task in data mining. However, m...
Numerical attribute management is a usual pre-processing task in data mining. Most of the algorithms...
Numerical analysis naturally finds applications in all fields of engineering and the physical scienc...
Association rule mining typically targets transactional data. In order to process non-transaction da...
International audienceBackground: The widespread use of electronic health records (EHRs) has generat...
AbstractAssociation rules represent a promising technique to improve heart disease prediction. Unfor...
International audienceBackground: The widespread use of electronic health records (EHRs) has generat...
International audienceBackground: The widespread use of electronic health records (EHRs) has generat...
In this paper, we present an improved association rule mining of data mining for the detection of Co...
International audienceBackground: The widespread use of electronic health records (EHRs) has generat...
AbstractThis work describes our experiences on discovering association rules in medical data to pred...
Early detection of patients with lifted danger of creating diabetes mellitus is basic to the enhance...