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CONCISE REPRESENTATIONS FOR ASSOCIATION RULES IN MULTI-LEVEL DATASETS

CONCISE REPRESENTATIONS FOR ASSOCIATION RULES IN MULTI-LEVEL DATASETS
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摘要 Association rule mining plays an important role in knowledge and information discovery. Often for a dataset, a huge number of rules can be extracted, but many of them are redundant, especially in the case of multi-level datasets. Mining non-redundant rules is a promising approach to solve this problem. However, existing work (Pasquier et al. 2005, Xu & Li 2007) is only focused on single level datasets. In this paper, we firstly present a definition for redundancy and a concise representation called Reliable basis for representing non-redundant association rules, then we propose an extension to the previous work that can remove hierarchically redundant rules from multi-level datasets. We also show that the resulting concise representation of non-redundant association rules is lossless since all association rules can be derived from the representation. Experiments show that our extension can effectively generate multilevel non-redundant rules. Association rule mining plays an important role in knowledge and information discovery. Often for a dataset, a huge number of rules can be extracted, but many of them are redundant, especially in the case of multi-level datasets. Mining non-redundant rules is a promising approach to solve this problem. However, existing work (Pasquier et al. 2005, Xu & Li 2007) is only focused on single level datasets. In this paper, we firstly present a definition for redundancy and a concise representation called Reliable basis for representing non-redundant association rules, then we propose an extension to the previous work that can remove hierarchically redundant rules from multi-level datasets. We also show that the resulting concise representation of non-redundant association rules is lossless since all association rules can be derived from the representation. Experiments show that our extension can effectively generate multilevel non-redundant rules.
作者 Gavin SHAW
出处 《Journal of Systems Science and Systems Engineering》 SCIE EI CSCD 2009年第1期53-70,共18页 系统科学与系统工程学报(英文版)
关键词 Association rule mining redundant association rules closed itemsets multi-level datasets Association rule mining, redundant association rules, closed itemsets, multi-level datasets
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参考文献15

  • 1Nicolas Pasquier,Rafik Taouil,Yves Bastide,Gerd Stumme,Lotfi Lakhal.Generating a Condensed Representation for Association Rules[J].Journal of Intelligent Information Systems.2005(1)
  • 2Mohammed J. Zaki.Mining Non-Redundant Association Rules[J].Data Mining and Knowledge Discovery.2004(3)
  • 3Marzena Kryszkiewicz,Henryk Rybiński,Marcin Gajek.Dataless Transitions Between Concise Representations of Frequent Patterns[J].Journal of Intelligent Information Systems.2004(1)
  • 4Tzung-Pei Hong,Kuei-Ying Lin,Been-Chian Chien.Mining Fuzzy Multiple-Level Association Rules from Quantitative Data[J].Applied Intelligence.2003(1)
  • 5Roberto J. Bayardo,Rakesh Agrawal,Dimitrios Gunopulos.Constraint-Based Rule Mining in Large, Dense Databases[J].Data Mining and Knowledge Discovery (-).2000(2-3)
  • 6Kaya,M,Alhajj,R.Mining multi-cross-level fuzzy weighted association rules[].the nd International IEEE Conference on Intelligent Systems.2004
  • 7Thakur,R.S,Jain,R.C,Pardasani,K.P.Mining level-crossing association rules from large databases[].Journal of Computer Science.2006
  • 8Wille,R.Restructuring lattices theory:An approach based on hierarchies of concepts[].Ordered Sets.1982
  • 9Xu,Y,Li,Y.Generating concise association rules[].Proceedings of the th ACM Conference on Information and Knowledge Management( CIKM).2007
  • 10Ziegler,C.N,McNee,S.M,Konstan,J.A,Lausen,G.Improving recommendation lists through topic diversification[].Proceedings of the th International World Wide Web Conference ( WWW).2005

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