Data mining has been recognized as a key research topic in database systems and machine learning. It aims to discover a useful knowledge from large amount of data. Data mining become one of the most important tools used for solving most of today's problems that are related to different sectors of our life. Different techniques have been developed for mining data in statistics, machine learning, and other disciplines. These techniques need to be re-evaluated, and scalable algorithms should be developed for effective data mining. This paper will investigate the use of RULES-3 Inductive Learning Algorithm for data mining by comparing it with three statistical, two Lazy, and six rule-based data mining algorithms on eleven real life data sets in...
Machine learning programs can automatically learn to recognise complex patterns and make intelligen...
Inductive learning enables the system to recognize patterns and regularities in previous knowledge o...
AbstractOur main objective was to compare two discretization techniques, both based on cluster analy...
This paper describes RULES3-EXT, a new algorithm for inductive learning. It has been developed to co...
In recent years, there has been a growing amount of research on inductive learning. Out of this rese...
RULES-3 Plus is a member of the RULES family of simple inductive learning algorithms with successful...
Knowledge acquisition techniques have been well researched in the data mining community. Such techni...
Symbolic inductive learning systems that induce concept descriptions from examples are valuable tool...
In this research work we use rule induction in data mining to obtain the accurate results with fast ...
Recently association rule mining algorithms are using to solve data mining problem in a popular mann...
In data mining the accuracy of models are associated with the strength of the rules.However, most ma...
In recent years, there has been a growing amount of research on inductive learning. Out of this rese...
In recent years, there has been a growing amount of research on inductive learning. Out of this rese...
. One of the defining challenges for the KDD research community is to enable inductive learning algo...
Abstract: In the context of data mining the feature size is very large and it is believed that it ne...
Machine learning programs can automatically learn to recognise complex patterns and make intelligen...
Inductive learning enables the system to recognize patterns and regularities in previous knowledge o...
AbstractOur main objective was to compare two discretization techniques, both based on cluster analy...
This paper describes RULES3-EXT, a new algorithm for inductive learning. It has been developed to co...
In recent years, there has been a growing amount of research on inductive learning. Out of this rese...
RULES-3 Plus is a member of the RULES family of simple inductive learning algorithms with successful...
Knowledge acquisition techniques have been well researched in the data mining community. Such techni...
Symbolic inductive learning systems that induce concept descriptions from examples are valuable tool...
In this research work we use rule induction in data mining to obtain the accurate results with fast ...
Recently association rule mining algorithms are using to solve data mining problem in a popular mann...
In data mining the accuracy of models are associated with the strength of the rules.However, most ma...
In recent years, there has been a growing amount of research on inductive learning. Out of this rese...
In recent years, there has been a growing amount of research on inductive learning. Out of this rese...
. One of the defining challenges for the KDD research community is to enable inductive learning algo...
Abstract: In the context of data mining the feature size is very large and it is believed that it ne...
Machine learning programs can automatically learn to recognise complex patterns and make intelligen...
Inductive learning enables the system to recognize patterns and regularities in previous knowledge o...
AbstractOur main objective was to compare two discretization techniques, both based on cluster analy...