AbstractIn the performance of data mining and knowledge discovery activities, rough set theory has been regarded as a powerful, feasible and effective methodology. There is a need for analysis of medical data that deals with incomplete and inconsistent information with the tremendous manipulation at different levels. In this context, rough set rule induction algorithms are capable of generating decision rules which can potentially provide new medical insight and profound medical knowledge. By taking into consideration all the above aspects, the present investigation is carried out. The results clearly show that rough set approach is certainly a useful tool for medical applications. Relationships and patterns within this data could provide n...
Rough set theory is based on the establishment of equivalence classes within the given training data...
Machine Learning techniques can be used to improve the performance of intelligent software systems. ...
The paper presents a method of association rules discovering from medical data using the evolutionar...
Data mining techniques can be applied in the area of Software Engineering for getting improved resul...
Abstract. Extensive amounts of knowledge and data stored in medical databases require the de-velopme...
AbstractMedical domain has become one of the most important areas of research in order to richness h...
In this paper, a hybrid approach incorporating genetic algorithm and rough set theory into Feature S...
Rough sets is a fairly new and promising technique for data mining and knowledge discovery from data...
The knowledge discovery from real-life databases is a multi-phase process consisting of numerous ste...
Data mining, referred to as knowledge discovery in databases (KDD), is the nontrivial process of ide...
This thesis examines how discernibility-based methods can be equipped to posses several qualities th...
Abstract:- In general, human-readable rule refers to data shown in a for-mat easily read by most hum...
This paper proposes an optimal strategy for extracting probabilistic rules from databases. Two induc...
Data mining has become an important research topic. The increasing use of computer results in an exp...
AbstractMedical datasets consume enormous amount of information about the patients, diseases and the...
Rough set theory is based on the establishment of equivalence classes within the given training data...
Machine Learning techniques can be used to improve the performance of intelligent software systems. ...
The paper presents a method of association rules discovering from medical data using the evolutionar...
Data mining techniques can be applied in the area of Software Engineering for getting improved resul...
Abstract. Extensive amounts of knowledge and data stored in medical databases require the de-velopme...
AbstractMedical domain has become one of the most important areas of research in order to richness h...
In this paper, a hybrid approach incorporating genetic algorithm and rough set theory into Feature S...
Rough sets is a fairly new and promising technique for data mining and knowledge discovery from data...
The knowledge discovery from real-life databases is a multi-phase process consisting of numerous ste...
Data mining, referred to as knowledge discovery in databases (KDD), is the nontrivial process of ide...
This thesis examines how discernibility-based methods can be equipped to posses several qualities th...
Abstract:- In general, human-readable rule refers to data shown in a for-mat easily read by most hum...
This paper proposes an optimal strategy for extracting probabilistic rules from databases. Two induc...
Data mining has become an important research topic. The increasing use of computer results in an exp...
AbstractMedical datasets consume enormous amount of information about the patients, diseases and the...
Rough set theory is based on the establishment of equivalence classes within the given training data...
Machine Learning techniques can be used to improve the performance of intelligent software systems. ...
The paper presents a method of association rules discovering from medical data using the evolutionar...