One of the most important problems in rule induction methods is how to estimate which method is the best to use in an applied domain. While some methods are useful in some domains, they aTe not useful in other domains. Therefore it is very dificult to choose one of these methods. FOT this purpose, we introduce mul-tiple testing based on recursive iteration of resampling methods for rule-induction (MULT-RECITE-R). This method consists of four procedures, which includes the inner loop and the outer loop procedures. First, orkg-inal training samples($) are randomly split into new training samples(&) and teat samples(T1) using a Te-sampiing scheme. second, & are again spiii inio training sample(&) and training samples(li) using the...
Symbolic inductive learning systems that induce concept descriptions from examples are valuable tool...
Machine learning has been studied intensively during the past two decades. One motivation has been t...
Inducing general functions from specific training examples is a central problem in the machine learn...
AbstractThis paper proposes a method for hiearchical sampling for rule induction. The method generat...
. This paper describes a multi-layer incremental induction algorithm, MLII, which is linked to an ex...
RULES-3 Plus is a member of the RULES family of simple inductive learning algorithms with successful...
Rule induction, a subarea of machine learning, is concerned with the problem of constructing rules f...
This paper describes RULES3-EXT, a new algorithm for inductive learning. It has been developed to co...
wcohenresearchattcom Many existing rule learning systems are computationally expensive on large nois...
Abstract. Rule induction from data with numerical attributes must be accompanied by discretization. ...
Machine learning programs can automatically learn to recognise complex patterns and make intelligen...
AbstractOur main objective was to compare two discretization techniques, both based on cluster analy...
In this research work we use rule induction in data mining to obtain the accurate results with fast ...
Central to all systems for machine learning from examples is an induction algorithm. The purpose of ...
Data mining has been recognized as a key research topic in database systems and machine learning. It...
Symbolic inductive learning systems that induce concept descriptions from examples are valuable tool...
Machine learning has been studied intensively during the past two decades. One motivation has been t...
Inducing general functions from specific training examples is a central problem in the machine learn...
AbstractThis paper proposes a method for hiearchical sampling for rule induction. The method generat...
. This paper describes a multi-layer incremental induction algorithm, MLII, which is linked to an ex...
RULES-3 Plus is a member of the RULES family of simple inductive learning algorithms with successful...
Rule induction, a subarea of machine learning, is concerned with the problem of constructing rules f...
This paper describes RULES3-EXT, a new algorithm for inductive learning. It has been developed to co...
wcohenresearchattcom Many existing rule learning systems are computationally expensive on large nois...
Abstract. Rule induction from data with numerical attributes must be accompanied by discretization. ...
Machine learning programs can automatically learn to recognise complex patterns and make intelligen...
AbstractOur main objective was to compare two discretization techniques, both based on cluster analy...
In this research work we use rule induction in data mining to obtain the accurate results with fast ...
Central to all systems for machine learning from examples is an induction algorithm. The purpose of ...
Data mining has been recognized as a key research topic in database systems and machine learning. It...
Symbolic inductive learning systems that induce concept descriptions from examples are valuable tool...
Machine learning has been studied intensively during the past two decades. One motivation has been t...
Inducing general functions from specific training examples is a central problem in the machine learn...