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引用次数: 55
摘要
增量算法可以对早期挖掘的结果进行操作,从而得出各种业务的最终挖掘输出。本文提出了一种新的快速更新算法(new Fast UPdate algorithm, NFUP),用于从大型事务数据库中高效地增量挖掘关联规则。NFUP是一种向后的方法,只需要扫描增量数据库。在增量数据库中,我们不再重新扫描原始数据库中新生成的频繁项集,而是将新生成的频繁项集的出现次数累加,并明显删除不频繁的项集。因此,NFUP不需要重新扫描原始数据库并发现新生成的频繁项集。在我们的仿真中NFUP具有良好的可扩展性。
An efficient algorithm for incremental mining of association rules
Incremental algorithms can manipulate the results of earlier mining to derive the final mining output in various businesses. This study proposes a new algorithm, called the New Fast UPdate algorithm (NFUP) for efficiently incrementally mining association rules from a large transaction database. NFUP is a backward method that only requires scanning incremental database. Rather than rescanning the original database for some new generated frequent itemsets in the incremental database, we accumulate the occurrence counts of newly generated frequent itemsets and delete infrequent itemsets obviously. Thus, NFUP need not rescan the original database and to discover newly generated frequent itemsets. NFUP has good scalability in our simulation.