96
Views
0
CrossRef citations to date
0
Altmetric
Original Articles

On Mining of Data

, , FIETE & , FIETE
Pages 5-17 | Published online: 26 Mar 2015

REFERENCES

  • J R M Hosking. EPD Pednault & Madhusudan, A Statistical Perspective on Data Mining, Future Generation Computer Systems, vol 13, pp 117–134, 1997.
  • G Piatetsky-Shapiro & W J Frawley, Knowledge Discovery in Data Bases. AAAI/MIT Press, 1991.
  • U M Fayyad, G Piatetsky-Shaprio & P Smyth, The KDD Process for Extracting Useful Knowledge from Volumes of Data Communication of the ACM, pp 27–34, Nov 1994.
  • M S Chen, J Han & P S Yu, Data Mining: An Overview from Database Perspective, IEEE TKDE. vol 8, no 6, pp 866–883, Dec 1996.
  • C J Matheus, P K Chan & G Pistetsky Sahppiro, System for knowledge Discovery in Databases, IEEE TKDE. vol 5, no 6. Dec 1993.
  • R J Brachman et al. Mining Business Databases, Communications of ACM, pp 51–57, Nov 1996.
  • U M Fayyad, D Haussler & P Stolorz, Mining Scientific Data, Communication of ACM, pp 27–34, Nov 1996.
  • C Glymour, D Madigan, D Pregibon & P Smyth, Statistical Inference and Data Mining, Communications of the ACM, pp 35–41, Nov 1996.
  • U M Fayyad & P Stolriz, Data mining and KDD: Promises and ChaHanges, Future Generation Computer Systems, (13). 1997.
  • Cabena et al, Discovering Data Mining From Concepts to Implementation, International Technical Support Organization, Prentice-Hall Inc, 1997.
  • H Lu, R Setiono & H Liu, Effective Data Mining Using Neural Networks, IEEE Trans on Know and Data Engg, vol 5, no 8, Dec 1996.
  • J Nearhos, M Rothman & M Viveros, Applying Data Mining Techniques to a Health Insurance Information System, in Proceedings of 22nd Int'l Confon VLDB. 1996.
  • R Agrawal, C Faloutsos & A Sawmi, Efficient Similarity Search in Sequence Databases, in Proceedings of Inl'l Conf on Foundation of Data Organization and Algorithms, Oct 1993.
  • P S Bradley, U M Fayyad & O L Mangasarain, Data mining: Overview and Optimization Opportunities, Report-MSR-TR-98-04, Microsoft Research, 1998.
  • S Chakrabarti et al. Using Taxonomy, Discriminants and Signatures for Navigating in Text Databases, in Proceedings of 23rd Int'l Confon VLDB, 1997.
  • B Lent, R Agrawal & R Srikant, Discovering Trends in Text Databases, in Proceedings of 3rd Int'l Conf on Knowledge Discovery and Data Mining, Aug 1997.
  • Webminer, URL: http://www.cs.sfu.ca/Webminer/.
  • Web Mining Project, URL: http://www.cs.cmu.edu/cald/research-tom.html.
  • R Agrawal, T Imielinski & A Swami, Mining Association Rules between Sets of Items in Large Databasess, in Proceedings of Int'l Conf on Mangement of Data, pp 207–216, May 1993.
  • H Mannila, H Toivonen & A I Verkamo, Improved Methods for Finding Association Rules, Publication No. C-1993-65, University of Helsinki, Finland, 1993.
  • M Houstma & A Swami, Set Oriented Mining of Association Rules in Proceedings of the Int'l Confon Data Engineering, pp 25–33, 1995.
  • R Agrawal & R Srikant, Fast Algorithm for Mining Association Rules in Proceedings of 20th VLDB Conf, 1994.
  • J S Park, M Chen & P S Yu, An Effective Hash Based Algorithm for Mining Association Rules, in Proceedings of Int'l Confon Management of Data (SIGMOD95), 1995.
  • R Srikant & R Agrawal, Mining Generalized Association Rules, in Proceedings of 21st VLDB Conference, 1995.
  • R Agrawal & R Srikant, Mining Quantitative Association Rules in Large Relational Tables in Proceedings of ACM SIGMOD Conf on Management of Data, June 1996.
  • D W Cheung, V T Ng & A W Fu, Efficient Mining of Association Rules in Distributed Databases, IEEE Trans on KDE. vol 8. no 6, Dec 1996.
  • R Agrawal & J C Shafer, Parallel Mining of Association Rules, IEEE Trans on KDE, vol 8, no 6, pp 962–969, Dec 1006.
  • R Agrawal & J C Shafer, Parallel Mining of Association Rules: Design and Implementation, Research Report RJ-100004(02/01/96). IBM Almaden Research Center, San Jose. CA, 1996.
  • J S Park, P S Yu & M S Chen, Mining Association Rules with Adjustable Accuracy in Proceedings of the 6'th Int'l Conf on Information and Knowledge Management, pp 151–160, 1997.
  • S Bin, R Motwani et al, Dynamics Itemset counting and Implication Rules for Marketbasket Data, in Proceedings of ACM-SIGMODF Conf on Mgmt of Data, pp 255–264, 1997.
  • D I Lin & Z M Kedem, Pincer Search: A new algorithm for Discovering the Maximum Frequent Set in Proceedings of Int'l Conf on Extending Database Technology, 1998.
  • N Megiddo & R Srikant, Discovering Predictive Association Rules in Proceedings of Int'l Conf on Knowledge Discovery and Data Mining, pp 274–278. 1998.
  • R Meo, A New Approach for Discovery of Frequent Itemset in Proceedings of 1'st Int'l Conf on Data Warehousing and Knowledge Discovery, Aug 1999.
  • A Hafez, V V Raghavan & J Deogun, The Item-Set Tree: A Data Structure for Data Mining in Proceedings of 1st Intl Conf on Data Warehousing and Knowledge Discovery, Aug 1999.
  • C Apte & S Wiess, Data Mining with Decision Trees and Decision Rules, Future Generation Computer Systems, vol 13, 1997.
  • T Mitchell, Machine Learning, McGraw Hill, 1997.
  • A Collin, Build Decision Trees with ID3 Algorithm, Dr Dobbs Journal, 1997.
  • J R Quinlan, C4.5 Programs for Machine Learning, Morgan Kaufman, 1997.
  • P E Utgoff, Incremental Induction, of Decision Trees, Kluwer Academic Publishers, 1989.
  • J R Quinlan, Induction of Decision Trees, Machine Learning, vol 1, no 1, pp 81–106, 1986.
  • R Agrawal, S Ghosh, T Imielinksi, B Iyer & A Swami, An Interval Classifer for Database Mining Applications, in Proceedings of the 18th Int'l Conf on VLDB, pp 560–573. Aug 1992.
  • Agrawal & J Rissanen, A Fast Scalable Classifer for Data Mining, in Proceedings of the Fifth Int'l Conf on Extending Database Technology, Mar 1996.
  • M Mehtra, J Rissanen & R Agrawal, MDL Based Decision Tree Pruning, in Proc of 1st Int Conf on Know Disc in Databases and Daa Mining, Aug 1995.
  • J Shafer, R Agrawal & M Mehta, A Scalable Parallel Classifer for Data Mining in Proceedings of 22nd Int'l Conf on VLDB, 1996.
  • S K Murthy, S Kasif & S Salzberg, A System for Induction of Oblique Decision Trees, Artificial Intelligence Research, pp 1–32, 1994.
  • S Salzberg, On Comnparing Classifers: Pitfalls to avoid and a Recommended Approach, Data Mining and Knowledge Discover, vol I, pp 317–327, 1997.
  • J A Hartigan, Clustring Algorithms, 1975.
  • A D Gordon, Classification: Methods for Exploratory Analysis of Multivariate Data, Chapman and Hall, 1981.
  • L Kaufman & P J Rosseeuw, Finding Groups in Data: An Introduction to Cluster Analysis, Willey, 1990.
  • F Murtagh, Multidimensional Clustering Algorithms, Physica-Verlag, Vienna, 1985.
  • R Ng & J Han, Efficient and Effective Clustering Method for Spatial Data Mining, in Proceedings of 20th Int'l Conf on VLDB, Sep 1994.
  • P Michaud, Clustering Techniques, Future Generation Computer Systems, vol 13, 1997.

Reprints and Corporate Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

To request a reprint or corporate permissions for this article, please click on the relevant link below:

Academic Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

Obtain permissions instantly via Rightslink by clicking on the button below:

If you are unable to obtain permissions via Rightslink, please complete and submit this Permissions form. For more information, please visit our Permissions help page.