Data mining has recently attracted tremendous amount ofattention in the database research because of its wide applicability in many areas, including decision support, market strategy and financial forecast. One of the most important data mining applications is that of mining association rules. There have been many algorithms on efficient discovery of association rules in large database. However, as the databases grow, the discovered rules need to be verified. It is nontrivial because a database may allow frequent or associational updates and such updates may not only invalidate some existing strong association rules but also turn some existing strong association rules but also turn some weak rules into strong ones. Therefore, mining afresh ...
[[abstract]]In this paper, we study the issues of mining and maintaining association rules in a larg...
In this paper, we devise an algorithm with which we can estimate the difference between the associat...
Data mining is the process of exploring and analyzing large databases to extract interesting and pr...
The association rules represent an important class of knowledge that can be discovered from data war...
Abstract- Applying data mining techniques to real-world applications is a challenging task because t...
[[abstract]]Incremental algorithms can manipulate the results of earlier mining to derive the final ...
In dynamic databases, new transactions are appended as time advances. This paper is concerned with a...
Abstract—Discover frequent itemsets is the key problem of mining association rules, and the expendit...
A more general incremental updating technique is developed for maintaining the association rules dis...
Mining association rules among items in a large database have been recognized as one of the most imp...
As new transactions update data sources and subsequently the data warehouse, the previously discover...
Data mining is essentially applied to discover new knowledge from a database through an iterative pr...
Mining of association rules is one of the important tasks in Data Mining. Association Rules find the...
An incremental updating technique is developed for maintenance of the association rules discovered b...
Incremental mining algorithms that can efficiently derive the current mining output by utilizing...
[[abstract]]In this paper, we study the issues of mining and maintaining association rules in a larg...
In this paper, we devise an algorithm with which we can estimate the difference between the associat...
Data mining is the process of exploring and analyzing large databases to extract interesting and pr...
The association rules represent an important class of knowledge that can be discovered from data war...
Abstract- Applying data mining techniques to real-world applications is a challenging task because t...
[[abstract]]Incremental algorithms can manipulate the results of earlier mining to derive the final ...
In dynamic databases, new transactions are appended as time advances. This paper is concerned with a...
Abstract—Discover frequent itemsets is the key problem of mining association rules, and the expendit...
A more general incremental updating technique is developed for maintaining the association rules dis...
Mining association rules among items in a large database have been recognized as one of the most imp...
As new transactions update data sources and subsequently the data warehouse, the previously discover...
Data mining is essentially applied to discover new knowledge from a database through an iterative pr...
Mining of association rules is one of the important tasks in Data Mining. Association Rules find the...
An incremental updating technique is developed for maintenance of the association rules discovered b...
Incremental mining algorithms that can efficiently derive the current mining output by utilizing...
[[abstract]]In this paper, we study the issues of mining and maintaining association rules in a larg...
In this paper, we devise an algorithm with which we can estimate the difference between the associat...
Data mining is the process of exploring and analyzing large databases to extract interesting and pr...