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Efficient Incremental Maintenance of Frequent Patterns with FP-Tree 被引量:9
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作者 Xiu-LiMa Yun-HaiTong +1 位作者 shi-weitang Dong-QingYang 《Journal of Computer Science & Technology》 SCIE EI CSCD 2004年第6期876-884,共9页
Mining frequent patterns has been studied popularly in data mining area. However, little work has been done on mining patterns when the database has an influx of fresh data constantly. In these dynamic scenarios, effi... Mining frequent patterns has been studied popularly in data mining area. However, little work has been done on mining patterns when the database has an influx of fresh data constantly. In these dynamic scenarios, efficient maintenance of the discovered patterns is crucial. Most existing methods need to scan the entire database repeatedly, which is an obvious disadvantage. In this paper, an efficient incremental mining algorithm, Incremental-Mining (IM), is proposed for maintenance of the frequent patterns when incremental data come. Based on the frequent pattern tree (FP-tree) structure, IM gives a way to make the most of the things from the previous mining process, and requires scanning the original data once at most. Furthermore, IM can identify directly the differential set of frequent patterns, which may be more informative to users. Moreover, IM can deal with changing thresholds as well as changing data, thus provide a full maintenance scheme. IM has been implemented and the performance study shows it outperforms three other incremental algorithms: FUP, DB-tree and re-running frequent pattern growth (FP-growth). Keywords data mining - association rule mining - frequent pattern mining - incremental mining Supported by the National Basic Research 973 Program of China under Grant No.G1999032705.Xiu-Li Ma received the Ph.D. degree in computer science from Peking University in 2003. She is currently a postdoctoral researcher at National Lab on Machine Perception of Peking University. Her main research interests include data warehousing, data mining, intelligent online analysis, and sensor network.Yun-Hai Tong received the Ph.D. degree in computer software from Peking University in 2002. He is currently an assistant professor at School of Electronics Engineering and Computer Science of Peking University. His research interests include data warehousing, online analysis processing and data mining.Shi-Wei Tang received the B.S. degree in mathematics from Peking University in 1964. Now, he is a professor and Ph.D. supervisor at School of Electronics Engineering and Computer Science of Peking University. His research interests include DBMS, information integration, data warehousing. OLAP, and data mining, database technology in specific application fields. He is the vice chair of the Database Society of China Computer Federation.Dong-Qing Yang received the B.S. degree in mathematics from Peking University in 1969. Now, she is a professor and Ph.D supervisor at School of Electronics Engineering and Computer Science of Peking University. Her research interests include database design methodology, database system implementation techniques, data warehousing and data mining, information integration and sharing in Web environment. She is a member of academic committee of Database Society of China Computer Federation. 展开更多
关键词 data mining association rule mining frequent pattern mining incremental mining
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基于频繁模式树的频繁模式高效增量维护
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作者 Xiu-LiMa Yun-HaiTong +1 位作者 shi-weitang Dong-QingYang 《Journal of Computer Science & Technology》 SCIE EI CSCD 2004年第C00期76-76,共1页
频繁模式的挖掘是数据挖掘领域中一个非常重要的问题,目前在高效、可扩展的频繁模式挖掘算法方面有大量研究。已有频繁模式挖掘算法大致分为两类:基于候选生成一测试策略的Apriori算法以及基于分而治之策略的频繁模式增长算法。已有... 频繁模式的挖掘是数据挖掘领域中一个非常重要的问题,目前在高效、可扩展的频繁模式挖掘算法方面有大量研究。已有频繁模式挖掘算法大致分为两类:基于候选生成一测试策略的Apriori算法以及基于分而治之策略的频繁模式增长算法。已有的工作大多都假设待挖掘的数据是不变的。 展开更多
关键词 频繁模式树 挖掘算法 分而治之 可扩展 APRIORI算法 数据挖掘 测试策略 增量 问题 假设
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