AbstractÐMining association rules is an important task for knowledge discovery. We can analyze past transaction data to discover customer behaviors such that the quality of business decision can be improved. Various types of association rules may exist in a large database of customer transactions. The strategy of mining association rules focuses on discovering large itemsets, which are groups of items which appear together in a sufficient number of transactions. In this paper, we propose a graph-based approach to generate various types of association rules from a large database of customer transactions. This approach scans the database once to construct an association graph and then traverses the graph to generate all large itemsets. Empiri...
Abstract: A transaction database (TDB) consists of a set I of items and a multiset D of nonempty sub...
Mining for association rules between items in a large database of sales transactions has been descri...
This paper will contain a comparison of popular methods o f discovering association rules between it...
[[abstract]]In this paper, we study the issues of mining and maintaining association rules in a larg...
[[abstract]]In this paper, we study the issues of mining and maintaining association rules in a larg...
[[abstract]]In this paper, we study two problems: mining association rules and mining sequential pat...
[[abstract]]With the growing interest in commercial trend analysis, mining association rules in larg...
We are given a large database of customer transactions. Each transaction consists of items purchased...
[[abstract]]Mining association rules is an important task. Past transaction data can be analyzed to ...
Data mining is the process of exploring and analyzing large databases to extract interesting and pr...
Mining association rules from a large collection of databases is based on two main tasks. One is gen...
Mining association rules from a large collection of databases is based on two main tasks. One is gen...
Abstract- Data mining is the process of extracting interesting, useful and previously unknown inform...
Abstract: We consider the problem of discovering association rules between items in a large database...
In this paper, we examine the issue of mining association rules among items in a large database of s...
Abstract: A transaction database (TDB) consists of a set I of items and a multiset D of nonempty sub...
Mining for association rules between items in a large database of sales transactions has been descri...
This paper will contain a comparison of popular methods o f discovering association rules between it...
[[abstract]]In this paper, we study the issues of mining and maintaining association rules in a larg...
[[abstract]]In this paper, we study the issues of mining and maintaining association rules in a larg...
[[abstract]]In this paper, we study two problems: mining association rules and mining sequential pat...
[[abstract]]With the growing interest in commercial trend analysis, mining association rules in larg...
We are given a large database of customer transactions. Each transaction consists of items purchased...
[[abstract]]Mining association rules is an important task. Past transaction data can be analyzed to ...
Data mining is the process of exploring and analyzing large databases to extract interesting and pr...
Mining association rules from a large collection of databases is based on two main tasks. One is gen...
Mining association rules from a large collection of databases is based on two main tasks. One is gen...
Abstract- Data mining is the process of extracting interesting, useful and previously unknown inform...
Abstract: We consider the problem of discovering association rules between items in a large database...
In this paper, we examine the issue of mining association rules among items in a large database of s...
Abstract: A transaction database (TDB) consists of a set I of items and a multiset D of nonempty sub...
Mining for association rules between items in a large database of sales transactions has been descri...
This paper will contain a comparison of popular methods o f discovering association rules between it...