Data mining aims at discovering important and previously unknown patterns from the dataset in the underlying database. Database mining performs mining directly on data stored in relational database management systems (RDBMSs). The type of underlying database can vary and should not be a constraint on the mining process. Irrespective of the database in which data is stored, we should be able to mine the data. Several SQL92 approaches (such as K-way join, Query/Subquery, and Two-group by) have been studied in the literature. In this paper, we focus on the K-way join approach. We study several additional optimizations for the K-way join approach and evaluate them using DB2 and Oracle RDBMSs. We evaluate the approaches analytically and compare ...
Using SQL has not been considered an ecient and feasible way to implement data mining algorithms. Al...
Inductive database systems typically include algorithms for mining and querying frequent patterns an...
We performed an investigation of how several data relationship discovery algorithms can be combined ...
Data mining is an important real-life application for businesses. It is critical to find efficient w...
Association rule mining is an important data mining problem. It is found to be useful for convention...
The multi-relational Data Mining approach has emerged as alternative to the analysis of structured d...
In this paper, we describe our research into building an optimizer for association rule queries. We ...
Describe set-oriented algorithms for mining association rules. Such algorithms imply performing mult...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
Abstract: Mining association rules from databases has attracted great interest because of its poten...
Advanced Data Mining applications require more and more support from relational database engines. Es...
We discuss the use of database methods for data mining. Recently impressive results have been achiev...
Efficient activation of rules is a fundamental issue in active database systems; choosing the suitab...
Almost a decade ago, Imielinski and Mannila introduced the notion of Inductive Databases to manage K...
Abstract — Association rule mining is a way to find interesting associations among different large s...
Using SQL has not been considered an ecient and feasible way to implement data mining algorithms. Al...
Inductive database systems typically include algorithms for mining and querying frequent patterns an...
We performed an investigation of how several data relationship discovery algorithms can be combined ...
Data mining is an important real-life application for businesses. It is critical to find efficient w...
Association rule mining is an important data mining problem. It is found to be useful for convention...
The multi-relational Data Mining approach has emerged as alternative to the analysis of structured d...
In this paper, we describe our research into building an optimizer for association rule queries. We ...
Describe set-oriented algorithms for mining association rules. Such algorithms imply performing mult...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
Abstract: Mining association rules from databases has attracted great interest because of its poten...
Advanced Data Mining applications require more and more support from relational database engines. Es...
We discuss the use of database methods for data mining. Recently impressive results have been achiev...
Efficient activation of rules is a fundamental issue in active database systems; choosing the suitab...
Almost a decade ago, Imielinski and Mannila introduced the notion of Inductive Databases to manage K...
Abstract — Association rule mining is a way to find interesting associations among different large s...
Using SQL has not been considered an ecient and feasible way to implement data mining algorithms. Al...
Inductive database systems typically include algorithms for mining and querying frequent patterns an...
We performed an investigation of how several data relationship discovery algorithms can be combined ...