next up previous contents
Next: About this document ... Up: No Title Previous: Conclusion and Future Work

References

1.
Vasudha Bhatnagar, S K Wasan, S K Gupta & DVLN Somayajulu, An Architectural Framework for KDD process, communicated to SIGMOD, 2000.

2.
S K Gupta, Jitendra Arora and DVLN Somayajulu, A scalable classifier, In Proceedings of DEXA, Aug 1998.

3.
Uma B, Incremental Association Rule Algorithm for Intension Mining, M.Tech. Thesis, Computer Science & Engg. Deptt., IIT Delhi, 1999.

4.
G Piatetsky Shapiro and W J Frawley, Knowledge Discovery in Databases, AAAI/MIT Press, 1991.

5.
Rakesh Agrawal, T Imielinksi and A Swamy, Database Mining : A Performance Perspective, IEEE TKDE, Vol. 5, No. 6, Dec 1993 (914-925).

6.
U Fayyad, G Piatetsky Shapiro and P Smyth, The KDD Process for Extracting Useful Knowledge from Volumes of Data, Communications of the ACM, Vol.39, number 11, Nov 1996.

7.
Rakesh Agrawal and R Srikant, Fast Algorithm for Mining Association Rules, Proceedings of 20th International Conference on Very Large Databases, Santiago, Chile, Sep 1994.

8.
Rakesh Agrawal, S Ghosh, T Imielinski, B Iyer, A Swami, An Interval Classifier for Database Mining Applications, Proceedings of the 18th International Conference on Very Large Databases, Vancouver, Aug 1992(560-573).

9.
Dao ILin and Zvi M Kedem, Pincer Search : A new algorithm for Discovering the Maximum Frequent Set, Proceedings of International Conference on Extending Database Technology, 1998.

10.
Sergy Bin, Rajeev Motwani and others, Dynamic Itemset counting and Implication Rules for Market basket Data, Proceedings of ACM SIGMOD Conference on Management of Data, 1997.

11.
Rosa Meo, A New Approach for Discovery of Frequent Itemset, Proceedings of 1st International Conference on Data Warehousing and Knowledge Discovery, Florence, Italy, Aug 1999.

12.
David W Cheung , J Han and others, Maintenance of Discovered Association Rules in Large Databases : An Incremental Updating Technique, Proceedings of International Conference on Data Engineering, Louisiana, Feb 1996.

13.
Gabar Malli, On-line classification with a Lazy model-based algorithm.

14.
Alaaedin Hafez, Vijay V Raghavan and Jitender Deogun, The Item-Set Tree : A Data Structure for Data Mining, Proceedings of 1st International Conference on Data Warehousing and Knowledge Discovery, Italy, Aug 1999.

15.
M Mehta, R Agrawal and J Rissanen, SLIQ : A Fast Scalable Classifier for Data Mining, Proceedings of the Fifth International Conference on Extending Database Technology, France, Mar 1996.

16.
Y Cai, Nick Cercone and Jawei Han, An Attribute Oriented Approach for Learning Classification Rules from Relational Database, Proceedings of 6th International Conference on Data Engineering, LA, Feb 1990.

17.
Sreeram K Murthy, Simon Kasif and Steven Salzberg, A System for Induction of Oblique Decision Trees, Artificial Intelligence Research, 1994.

18.
J Ross Quinlan, ID3 algorithm.

19.
J Han, Y Fu and others, DMQL : A Data Mining Query Language for Relational Databases, SIGMOD Workshop on Research Issues on Data mining and Knowledge Discovery, June, Montreal, Canada, 1996.

20.
P Michaud : Clustering Techniques, Future Generation Computer Systems, 1997.

21.
Ming Syan Chen, Jiawei Han and Philip S Yu, Data Mining : An Overview from Database Perspective, IEEE TKDE, Dec 1996.

22.
R Srikant and Rakesh Agrawal, Mining generalized association rules, Proceedings of the 21st International Conference on Very Large Databases, Zurich, Switzerland, Sep 1995.

23.
Hankil Yoon, Khaled Alsabti, Sanjay Ranka, Tree-based Incremental Classification for Large Datasets, CISE Department, University of Florida.


next up previous contents
Next: About this document ... Up: No Title Previous: Conclusion and Future Work
Deepak Goel
1/5/2000