See this document in CiteSeerX!

A Fast Distributed Algorithm for Mining Association Rules (1996)  (Make Corrections)  (52 citations)
David W. Cheung, Jiawei Han, Vincent T. Ng, Ada W. Fu, Yongjian Fu
PDIS: International Conference on Parallel and Distributed Information Systems



  Home/Search   Context   Related

 
View or download:
ntu.edu.tw/notebook/reviewed...FDM96.ps
fas.sfu.ca/pub/cs/han/kdd/FDM96.ps
cs.hku.hk/~dcheung/publicat...pdis96.ps
Cached:  PS.gz  PS  PDF   Image  Update  Help

From:  ntu.edu.tw/notebo...refs_category (more)
From:  cs.sfu.ca/research/groups/D...kdd
(Enter author homepages)

Rate this article: (best)
  Comment on this article  
(Enter summary)

Abstract: With the existence of many large transaction databases, the huge amounts of data, the high scalability of distributed systems, and the easy partition and distribution of a centralized database, it is important to investigate efficient methods for distributed mining of association rules. This study discloses some interesting relationships between locally large and globally large itemsets and proposes an interesting distributed association rule mining algorithm, FDM (Fast Distributed Mining of... (Update)

Cited by:   More
Algorithms for Clustering High Dimensional and - Tao   (Correct)
Association-Based Similarity Testing and Its Applications - Tao Li Department   (Correct)
Estimating Joint Probabilities without - Combinatory Counting April   (Correct)

Similar documents (at the sentence level):
69.6%:   A Fast Distributed Algorithm for Mining Association Rules - Cheung, Han, Ng, Fu, Fu (1996)   (Correct)
7.0%:   Efficient Mining of Association Rules in Distributed Databases - Cheung, Ng, Fu, Fu (1996)   (Correct)
5.3%:   Effect of Data Distribution in Parallel Mining of Associations - Cheung, Xiao (1999)   (Correct)

Active bibliography (related documents):   More   All
0.1:   Exploratory Mining and Pruning Optimizations of.. - Ng, Lakshmanan, Han.. (1998)   (Correct)
0.1:   Effect of Data Skewness in Parallel Mining of Association Rules - Cheung, Xiao (1998)   (Correct)
0.1:   On-Line Analytical Mining of Association Rules - Zhu (1998)   (Correct)

Similar documents based on text:   More   All
0.8:   Effect of Data Skewness and Workload Balance in Parallel Data .. - Cheung, Lee, Xiao   (Correct)
0.6:   Maintenance of Discovered Association Rules in Large.. - Cheung, Han, Ng, Wong (1996)   (Correct)
0.5:   Discovery of Multiple-Level Association Rules from Large Databases - Han, Fu (1995)   (Correct)

Related documents from co-citation:   More   All
31:   Fast Algorithms for Mining Association Rules - Agrawal, Srikant - 1994
22:   Scalable parallel data mining for association rules - Han, Karypis et al. - 1997
21:   Mining association rules between sets of items in large databases - Agrawal, Imielinski et al. - 1993

BibTeX entry:   (Update)

D. W. Cheung, J. Han, V. T. Ng, A. W. Fu, and Y. Fu. A fast distributed algorithms for mining association rules. In Proceedings of IEEE 4th International Conference on Parallel and Distributed Information Systems, pages 31--42, December 1996. http://citeseer.ist.psu.edu/article/cheung96fast.html   More

@inproceedings{ cheung96fast,
    author = "Cheung and Han and Ng and Fu and Fu",
    title = "A Fast Distributed Algorithm for Mining Association Rules",
    booktitle = "{PDIS}: International Conference on Parallel and Distributed Information Systems",
    publisher = "IEEE Computer Society Technical Committee on Data Engineering, and ACM SIGMOD",
    year = "1996",
    url = "citeseer.ist.psu.edu/article/cheung96fast.html" }
Citations (may not include all citations):
910   Fast algorithms for mining association rules - Agrawal, Srikant - 1994
474   Advances in Knowledge Discovery and Data Mining (context) - Fayyad, Piatetsky-Shapiro et al. - 1996
340   Mining sequential patterns - Agrawal, Srikant - 1995
268   Mining generalized association rules - Srikant, Agrawal - 1995
242   Efficient and effective clustering method for spatial data m.. - Ng, Han - 1994
213   Discovery of multiple-level association rules from large dat.. - Han, Fu - 1995
209   Mining quantitative association rules in large relational ta.. - Srikant, Agrawal - 1996
164   An efficient algorithm for mining association rules in large.. (context) - Savasere, Omiecinski et al. - 1995
125   An effective hash-based algorithm for mining association rul.. - Park, Chen et al. - 1995
114   Datadriven discovery of quantitative rules in relational dat.. (context) - Han, Cai et al. - 1993
106   Maintenance of discovered association rules in large databas.. - Cheung, Han et al. - 1996
67   A Users' Guide and Tutorial for Networked Parallel Computing (context) - Geist, Beguelin et al. - 1994
48   Parallel mining of association rules: Design (context) - Agrawal, Shafer - 1996
42   Database research: Achievements and opportunities into the 2.. - Silberschatz, Stonebraker et al. - 1995
8   Efficient parallel mining for association rules (context) - Park, Chen et al. - 1995



The graph only includes citing articles where the year of publication is known.


Documents on the same site (http://thor.csie.ntu.edu.tw/notebook/reviewed_paper/references/refs_category.html):   More
Scalable Internet Resource Discovery: Research Problems and.. - Bowman, Danzig (1994)   (Correct)
Advances of the DBLearn System for Knowledge Discovery in Large .. - Jiawei Han (1995)   (Correct)
Cooperative Query Answering Using Multiple Layered Databases.. - Han, Fu, Ng (1994)   (Correct)

Online articles have much greater impact   More about CiteSeer.IST   Add search form to your site   Submit documents   Feedback  

CiteSeer.IST - Copyright Penn State and NEC