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Note: Links lead to the DBLP on the Web. Jian Pei Jian Pei, Shambhu J. Upadhyaya , Faisal Farooq , Venugopal Govindaraju : Data Mining for Intrusion Detection: Techniques, Applications and Systems. ICDE 2004 : 877 Chen Wang , Mingsheng Hong , Jian Pei, Haofeng Zhou , Wei Wang , Baile Shi : Efficient Pattern-Growth Methods for Frequent Tree Pattern Mining. PAKDD 2004 : 441-451 Jiawei Han , Jian Pei, Yiwen Yin , Runying Mao : Mining Frequent Patterns without Candidate Generation: A Frequent-Pattern Tree Approach. Data Min. Knowl. Discov. 8 (1): 53-87 (2004) Daxin Jiang , Jian Pei, Aidong Zhang : DHC: A Density-Based Hierarchical Clustering Method for Time Series Gene Expression Dat. BIBE 2003 : 393-400 Jian Pei: A General Model for Online Analytical Processing of Complex Data. ER 2003 : 321-334 Jian Pei, Xiaoling Zhang , Moonjung Cho , Haixun Wang , Philip S. Yu : MaPle: A Fast Algorithm for Maximal Pattern-based Clustering. ICDM 2003 : 259-266 Jianyong Wang , Jiawei Han , Jian Pei: CLOSET+: searching for the best strategies for mining frequent closed itemsets. KDD 2003 : 236-245 Daxin Jiang , Jian Pei, Aidong Zhang : Interactive exploration of coherent patterns in time-series gene expression data. KDD 2003 : 565-570 Chun Tang , Aidong Zhang , Jian Pei: Mining phenotypes and informative genes from gene expression data. KDD 2003 : 655-660 Yan Huang , Hui Xiong , Shashi Shekhar , Jian Pei: Mining Confident Colocation Rules without A Support Threshold. SAC 2003 : 497-501 Hye-Chung (Monica) Kum , Jian Pei, Wei Wang , Dean Duncan : ApproxMAP: Approximate Mining of Consensus Sequential Patterns. SDM 2003 Laks V. S. Lakshmanan , Jian Pei, Yan Zhao : QC-Trees: An Efficient Summary Structure for Semantic OLAP. SIGMOD Conference 2003 : 64-75 Laks V. S. Lakshmanan , Jian Pei, Yan Zhao : SOCQET: Semantic OLAP with Compressed Cube and Summarization. SIGMOD Conference 2003 : 658 Laks V. S. Lakshmanan , Jian Pei, Yan Zhao : Efficacious Data Cube Exploration by Semantic Summarization and Compression. VLDB 2003 : 1125-1128 Jian Pei, Jiawei Han , Wei Wang : Mining sequential patterns with constraints in large databases. CIKM 2002 : 18-25 Yixin Chen , Guozhu Dong , Jiawei Han , Jian Pei, Benjamin W. Wah , Jianyong Wang : Online Analytical Processing Stream Data: Is It Feasible? DMKD 2002 Jian Pei, Guozhu Dong , Wei Zou , Jiawei Han : On Computing Condensed Frequent Pattern Bases. ICDM 2002 : 378-385 Tengjiao Wang , Shiwei Tang , Dongqing Yang , Jun Gao , Yuqing Wu , Jian Pei: COMMIX: towards effective web information extraction, integration and query answering. SIGMOD Conference 2002 : 620 Jiawei Han , Jianyong Wang , Guozhu Dong , Jian Pei, Ke Wang : CubeExplorer: online exploration of data cubes. SIGMOD Conference 2002 : 626 Laks V. S. Lakshmanan , Jian Pei, Jiawei Han : Quotient Cube: How to Summarize the Semantics of a Data Cube. VLDB 2002 : 778-789 Jian Pei, Jiawei Han : Constrained frequent pattern mining: a pattern-growth view. SIGKDD Explorations 4 (1): 31-39 (2002) Helen Pinto , Jiawei Han , Jian Pei, Ke Wang , Qiming Chen , Umeshwar Dayal : Multi-Dimensional Sequential Pattern Mining. CIKM 2001 : 81-88 Jian Pei, Anthony K. H. Tung , Jiawei Han : Fault-Tolerant Frequent Pattern Mining: Problems and Challenges. DMKD 2001 Jian Pei, Jiawei Han , Behzad Mortazavi-Asl , Helen Pinto , Qiming Chen , Umeshwar Dayal , Meichun Hsu : PrefixSpan: Mining Sequential Patterns by Prefix-Projected Growth. ICDE 2001 : 215-224 Jian Pei, Jiawei Han , Laks V. S. Lakshmanan : Mining Frequent Item Sets with Convertible Constraints. ICDE 2001 : 433-442 Wenmin Li , Jiawei Han , Jian Pei: CMAR: Accurate and Efficient Classification Based on Multiple Class-Association Rules. ICDM 2001 : 369-376 Jian Pei, Jiawei Han , Hongjun Lu , Shojiro Nishio , Shiwei Tang , Dongqing Yang : H-Mine: Hyper-Structure Mining of Frequent Patterns in Large Databases. ICDM 2001 : 441-448 Jiawei Han , Laks V. S. Lakshmanan , Jian Pei: Scalable frequent-pattern mining methods: an overview. KDD Tutorials 2001 Jiawei Han , Hasan M. Jamil , Ying Lu , Liangyou Chen , Yaqin Liao , Jian Pei: DNA-Miner: A System Prototype for Mining DNA Sequences. SIGMOD Conference 2001 Jiawei Han , Jian Pei, Guozhu Dong , Ke Wang : Efficient Computation of Iceberg Cubes with Complex Measures. SIGMOD Conference 2001 Guozhu Dong , Jiawei Han , Joyce M. W. Lam , Jian Pei, Ke Wang : Mining Multi-Dimensional Constrained Gradients in Data Cubes. VLDB 2001 : 321-330 Jian Pei, Jiawei Han , Runying Mao : CLOSET: An Efficient Algorithm for Mining Frequent Closed Itemsets. ACM SIGMOD Workshop on Research Issues in Data Mining and Knowledge Discovery 2000 : 21-30 Jian Pei, Jiawei Han : Can we push more constraints into frequent pattern mining? KDD 2000 : 350-354 Jiawei Han , Jian Pei, Behzad Mortazavi-Asl , Qiming Chen , Umeshwar Dayal , Meichun Hsu : FreeSpan: frequent pattern-projected sequential pattern mining. KDD 2000 : 355-359 Jian Pei, Jiawei Han , Behzad Mortazavi-Asl , Hua Zhu : Mining Access Patterns Efficiently from Web Logs. PAKDD 2000 : 396-407 Jiawei Han , Jian Pei, Yiwen Yin : Mining Frequent Patterns without Candidate Generation. SIGMOD Conference 2000 : 1-12 Jian Pei, Runying Mao , Kan Hu , Hua Zhu : Towards Data Mining Benchmarking: A Testbed for Performance Study of Frequent Pattern Mining. SIGMOD Conference 2000 : 592 Jiawei Han , Jian Pei: Mining Frequent Patterns by Pattern-Growth: Methodology and Implications. SIGKDD Explorations 2 (2): 14-20 (2000) 1 [ 10 ] 2 [ 5 ] [ 15 ] [ 17 ] 3 [ 23 ] 4 [ 33 ] 5 [ 5 ] [ 15 ] [ 17 ] 6 [ 8 ] [ 9 ] [ 20 ] [ 22 ] [ 23 ] 7 [ 28 ] 8 [ 38 ] 9 [ 21 ] 10 [ 38 ] 11 [ 1 ] [ 3 ] [ 4 ] [ 5 ] [ 6 ] [ 7 ] [ 8 ] [ 9 ] [ 10 ] [ 11 ] [ 12 ] [ 13 ] [ 14 ] [ 15 ] [ 16 ] [ 17 ] [ 18 ] [ 19 ] [ 20 ] [ 22 ] [ 23 ] [ 24 ] [ 32 ] [ 36 ] 12 [ 37 ] 13 [ 5 ] [ 15 ] 14 [ 2 ] 15 [ 29 ] 16 [ 10 ] 17 [ 31 ] [ 35 ] 18 [ 28 ] 19 [ 11 ] [ 14 ] [ 19 ] [ 25 ] [ 26 ] [ 27 ] 20 [ 8 ] 21 [ 13 ] 22 [ 10 ] 23 [ 12 ] 24 [ 10 ] 25 [ 2 ] [ 7 ] [ 36 ] 26 [ 4 ] [ 5 ] [ 15 ] 27 [ 12 ] 28 [ 15 ] [ 17 ] 29 [ 29 ] 30 [ 37 ] 31 [ 30 ] 32 [ 12 ] [ 21 ] 33 [ 16 ] 34 [ 38 ] 35 [ 23 ] 36 [ 37 ] 37 [ 33 ] 38 [ 20 ] [ 23 ] [ 32 ] 39 [ 8 ] [ 9 ] [ 17 ] [ 20 ] 40 [ 21 ] 41 [ 24 ] [ 28 ] [ 37 ] 42 [ 21 ] 43 [ 29 ] 44 [ 12 ] [ 21 ] 45 [ 3 ] [ 36 ] 46 [ 33 ] 47 [ 30 ] [ 31 ] [ 35 ] 48 [ 33 ] 49 [ 25 ] [ 26 ] [ 27 ] 50 [ 37 ] 51 [ 2 ] [ 4 ] 52 [ 22 ] ![]() ©2004 Association for Computing Machinery |