Identifying Approximate Itemsets of Interest in Large Databases |
| |
Authors: | Chengqi Zhang Shichao Zhang Geoffrey I. Webb |
| |
Affiliation: | (1) Faculty of Information Technology, University of Technology, Sydney, PO Box 123, Broadway, NSW, 2007, Australia;(2) School of Computing, Guangxi University, People's Republic of China;(3) School of Computing and Mathematics, Deakin University, Geelong, Vic, 3217, Australia |
| |
Abstract: | ![]() This paper presents a method for discovering approximate frequent itemsets of interest in large scale databases. This method uses the central limit theorem to increase efficiency, enabling us to reduce the sample size by about half compared to previous approximations. Further efficiency is gained by pruning from the search space uninteresting frequent itemsets. In addition to improving efficiency, this measure also reduces the number of itemsets that the user need consider. The model and algorithm have been implemented and evaluated using both synthetic and real-world databases. Our experimental results demonstrate the efficiency of the approach. |
| |
Keywords: | data mining sampling approximate frequent itemset |
本文献已被 SpringerLink 等数据库收录! |
|