Author_Institution :
Coll. of Electr. Eng., Guangxi Univ., Nanning, China
Abstract :
It is very time-consuming to discover association rules from the mass of data, but not all the rules are interesting to the user, a lot of irrelevant information to the user´s requirements may be generated when traditional mining methods are applied. In addition, most of the existing algorithms are for discovering one-dimensional association rules. Therefore, this paper defines a mining language which allows users to specify items of interest to the association rules, as well as the criteria (for example, support, confidence, etc.), and proposes a method based on rough set theory for multi-dimensional association rule mining methods, dynamically generate frequent item sets and multi-dimensional association rules, which can reduce the search space to generate frequent itemsets. Finally, an example is used to illustrate the algorithm and verify its feasibility and effectiveness.
Keywords :
data mining; rough set theory; frequent itemsets; mining language; multidimensional association rules mining; rough set theory; rule discovery; search space reduction; Association rules; Data mining; Educational institutions; Electronic mail; Fuzzy systems; Itemsets; Mathematics; Multidimensional systems; Set theory; Transaction databases; association rule; frequent itemsets; multi-dimensional association rule; rough set;