In this paper, a Fuzzy Association Rule Mining (FARM) with expert-driven approach is proposed to acquire a knowledge-base, which corresponds more intuitively to human perception with a high comprehensibility. This approach reduces the number of rules in the knowledge-base when compared with the Standard Rule-base Formulation (SRF) and makes possible the rating of the rules according to their relevance. The rule relevance is determined by the measures of significance and certainty factors. The approach is validated using a medical database and the result shows that this approach ultimately reduces the number of rules and enhances the comprehensibility of the expert system
ABSTRASCT Due to increasing use of very large database and data warehouses, discovering useful knowl...
Cardiovascular decision support is one area of increasing research interest. On-going collaborations...
International audienceBackground: The widespread use of electronic health records (EHRs) has generat...
Over the years, one of the challenges of a rule based expert system is the possibility of evolving a...
This work proposes a classification-rule discovery algorithm integrating artificial immune systems a...
Apart from the need for superior accuracy, healthcare applications of intelligent systems also deman...
Health care domain systems globally face lots of difficulties because of the high amount of risk fac...
The use of machine learning in medical decision support systems can improve diagnostic accuracy and ...
Abstract: About one million women are diagnosed with breast cancer every year. Breast cancer makes u...
This paper shows how knowledge, in the form of fuzzy rules, can be derived from a self-organizing su...
Abstract: Mining fuzzy multidimensional association rules is one of the important processes in data ...
This paper describes a model that discovers association rules from a medical database to help doctor...
The conventional approach in developing a rule-based expert system usually applies a tedious, length...
The collection of methods known as 'data mining' offers methodological and technical solutio...
In this paper we have addressed the extraction of hidden knowledge from medical records using data ...
ABSTRASCT Due to increasing use of very large database and data warehouses, discovering useful knowl...
Cardiovascular decision support is one area of increasing research interest. On-going collaborations...
International audienceBackground: The widespread use of electronic health records (EHRs) has generat...
Over the years, one of the challenges of a rule based expert system is the possibility of evolving a...
This work proposes a classification-rule discovery algorithm integrating artificial immune systems a...
Apart from the need for superior accuracy, healthcare applications of intelligent systems also deman...
Health care domain systems globally face lots of difficulties because of the high amount of risk fac...
The use of machine learning in medical decision support systems can improve diagnostic accuracy and ...
Abstract: About one million women are diagnosed with breast cancer every year. Breast cancer makes u...
This paper shows how knowledge, in the form of fuzzy rules, can be derived from a self-organizing su...
Abstract: Mining fuzzy multidimensional association rules is one of the important processes in data ...
This paper describes a model that discovers association rules from a medical database to help doctor...
The conventional approach in developing a rule-based expert system usually applies a tedious, length...
The collection of methods known as 'data mining' offers methodological and technical solutio...
In this paper we have addressed the extraction of hidden knowledge from medical records using data ...
ABSTRASCT Due to increasing use of very large database and data warehouses, discovering useful knowl...
Cardiovascular decision support is one area of increasing research interest. On-going collaborations...
International audienceBackground: The widespread use of electronic health records (EHRs) has generat...