AbstractWith the wide availability of huge amounts of data in database systems, the extraction of knowledge in databases by efficient and powerful induction or knowledge discovery mechanisms has become an important issue in the construction of new generation database and knowledge-base systems. In this article, an attribute-oriented induction method for knowledge discovery in databases is investigated, which provides an efficient, set-oriented induction mechanism for extraction of different kinds of knowledge rules, such as characteristic rules, discriminant rules, data evolution regularities and high level dependency rules in large relational databases. Our study shows that the method is robust in the existence of noise and database update...
this paper are designed such that they can easily be generalised to other kinds of dependencies. Lik...
In most data-mining applications where induction is used as the primary tool for knowledge extractio...
The advent of active databases enhances the functionality of conventional passive databases. A large...
AbstractWith the wide availability of huge amounts of data in database systems, the extraction of kn...
Knowledge discovery in databases, or data mining, is an important issue in the development of data- ...
Data mining or knowledge discovery in databases is the search for relationships and global patterns ...
In this paper, we propose the framework of knowledge discovery technique for intelligent query answe...
Knowledge discovery in databases (KDD) is an active and promising research area with potentially hig...
Data mining has become an important technique which has tremendous potential in many commercial and ...
This paper introduces an attribute oriented induction method on a directed acyclic concept graph to ...
The efficient mining of large, commercially credible, databases requires a solution to at least two ...
Introduction The purpose of this research was to produce a machine learning system that can take ad...
Data Mining is the task of discovering interestingpatterns from large amounts of data where the data...
Abstract: The Knowledge Discovery in Databases and Data Mining field proposes the development of met...
Although knowledge discovery is increasingly important in databases, discovered knowledge is not alw...
this paper are designed such that they can easily be generalised to other kinds of dependencies. Lik...
In most data-mining applications where induction is used as the primary tool for knowledge extractio...
The advent of active databases enhances the functionality of conventional passive databases. A large...
AbstractWith the wide availability of huge amounts of data in database systems, the extraction of kn...
Knowledge discovery in databases, or data mining, is an important issue in the development of data- ...
Data mining or knowledge discovery in databases is the search for relationships and global patterns ...
In this paper, we propose the framework of knowledge discovery technique for intelligent query answe...
Knowledge discovery in databases (KDD) is an active and promising research area with potentially hig...
Data mining has become an important technique which has tremendous potential in many commercial and ...
This paper introduces an attribute oriented induction method on a directed acyclic concept graph to ...
The efficient mining of large, commercially credible, databases requires a solution to at least two ...
Introduction The purpose of this research was to produce a machine learning system that can take ad...
Data Mining is the task of discovering interestingpatterns from large amounts of data where the data...
Abstract: The Knowledge Discovery in Databases and Data Mining field proposes the development of met...
Although knowledge discovery is increasingly important in databases, discovered knowledge is not alw...
this paper are designed such that they can easily be generalised to other kinds of dependencies. Lik...
In most data-mining applications where induction is used as the primary tool for knowledge extractio...
The advent of active databases enhances the functionality of conventional passive databases. A large...