Knowledge discovery in databases, or data mining, is an important issue in the development of data- and knowledge-base systems. An attribute-oriented induction method has been developed for knowledge discovery in databases. The method integrates a machine learning paradigm, especially learning-from-examples techniques, with set-oriented database operations and extracts generalized data from actual data in databases. An attribute-oriented concept tree ascension technique is applied in generalization, which substantially reduces the computational complexity of database learning processes. Different kinds of knowledge rules, including characteristic rules, discrimination rules, quantitative rules, and data evolution regularities can be discove...
The discovery of knowledge in databases is currently a very active research area. Many discovery sys...
Although knowledge discovery is increasingly important in databases, discovered knowledge is not alw...
The efficient mining of large, commercially credible, databases requires a solution to at least two ...
AbstractWith the wide availability of huge amounts of data in database systems, the extraction of kn...
AbstractWith the wide availability of huge amounts of data in database systems, the extraction of kn...
Knowledge discovery in databases (KDD) is an active and promising research area with potentially hig...
Knowledge discovery in databases (KDD) is an active and promising research area with potentially hig...
Data mining or knowledge discovery in databases is the search for relationships and global patterns ...
Abstract: The Knowledge Discovery in Databases and Data Mining field proposes the development of met...
Data Mining is the task of discovering interestingpatterns from large amounts of data where the data...
Every day massive amount of data is generated, collected, and stored in information repositories suc...
Introduction The purpose of this research was to produce a machine learning system that can take ad...
Every day massive amount of data is generated, collected, and stored in information repositories suc...
Every day massive amount of data is generated, collected, and stored in information repositories suc...
This paper introduces an attribute oriented induction method on a directed acyclic concept graph to ...
The discovery of knowledge in databases is currently a very active research area. Many discovery sys...
Although knowledge discovery is increasingly important in databases, discovered knowledge is not alw...
The efficient mining of large, commercially credible, databases requires a solution to at least two ...
AbstractWith the wide availability of huge amounts of data in database systems, the extraction of kn...
AbstractWith the wide availability of huge amounts of data in database systems, the extraction of kn...
Knowledge discovery in databases (KDD) is an active and promising research area with potentially hig...
Knowledge discovery in databases (KDD) is an active and promising research area with potentially hig...
Data mining or knowledge discovery in databases is the search for relationships and global patterns ...
Abstract: The Knowledge Discovery in Databases and Data Mining field proposes the development of met...
Data Mining is the task of discovering interestingpatterns from large amounts of data where the data...
Every day massive amount of data is generated, collected, and stored in information repositories suc...
Introduction The purpose of this research was to produce a machine learning system that can take ad...
Every day massive amount of data is generated, collected, and stored in information repositories suc...
Every day massive amount of data is generated, collected, and stored in information repositories suc...
This paper introduces an attribute oriented induction method on a directed acyclic concept graph to ...
The discovery of knowledge in databases is currently a very active research area. Many discovery sys...
Although knowledge discovery is increasingly important in databases, discovered knowledge is not alw...
The efficient mining of large, commercially credible, databases requires a solution to at least two ...