CFP last date
20 December 2024
Reseach Article

Discovering in Formative Knowledge using Combined Mining Approach

by Aniket A. Yadav
International Journal of Computer Applications
Foundation of Computer Science (FCS), NY, USA
Volume 124 - Number 9
Year of Publication: 2015
Authors: Aniket A. Yadav
10.5120/ijca2015905243

Aniket A. Yadav . Discovering in Formative Knowledge using Combined Mining Approach. International Journal of Computer Applications. 124, 9 ( August 2015), 13-17. DOI=10.5120/ijca2015905243

@article{ 10.5120/ijca2015905243,
author = { Aniket A. Yadav },
title = { Discovering in Formative Knowledge using Combined Mining Approach },
journal = { International Journal of Computer Applications },
issue_date = { August 2015 },
volume = { 124 },
number = { 9 },
month = { August },
year = { 2015 },
issn = { 0975-8887 },
pages = { 13-17 },
numpages = {9},
url = { https://ijcaonline.org/archives/volume124/number9/22130-2015905243/ },
doi = { 10.5120/ijca2015905243 },
publisher = {Foundation of Computer Science (FCS), NY, USA},
address = {New York, USA}
}
%0 Journal Article
%1 2024-02-06T23:13:55.764480+05:30
%A Aniket A. Yadav
%T Discovering in Formative Knowledge using Combined Mining Approach
%J International Journal of Computer Applications
%@ 0975-8887
%V 124
%N 9
%P 13-17
%D 2015
%I Foundation of Computer Science (FCS), NY, USA
Abstract

Data mining applications involve complex data like multiple heterogeneous data sources, different user preference and create decision making activities. The comprehensive, useful information may not be obtained by using the single data mining method in the form of informative patterns as that would consume more time and space. Combined mining is a hybrid mining approach for mining informative patterns from single or multiple data sources, many features abstraction and merging multiple methods as per the requirements. Some concepts show hybrid or combined mining approach. In this paper, multi method combined mining methodology is designed. Proposed method combine apriori algorithm with Multi-Objective Evolutionary Algorithm. It helps to improve searching for the exact products from complex data. Proposed method combine apriori algorithm with multi-objective evolutionary algorithm to improve searching of documents from complex data. It addressed challenging problems in combined mining and summarized and proposed effective pattern merging and interaction paradigms, combined pattern types, such as pair patterns and cluster patterns, interestingness measures. In the proposed method, by using apriori algorithm, calculate the support and confidence of the frequent item set which improve results of searching by a using multi-objective evolutionary algorithm.

References
  1. C. Zhang, D. Luo, H. Zhang, L. Cao and Y. Zhao (2011), “Combined Mining: Discovering Informative Knowledge in Complex Data”, IEEE TRANSACTIONS ON SYSTEMS, MAN, AND CYBERNETICS PART B: CYBERNETICS, VOL. 41, NO. 3, pp. 699-712.
  2. Han and Kamber (2006), “Data Mining Concepts and Techniques”, 2nd Ed., United State of America.
  3. C. Zhang, F. Figueiredo, H. Zhang, L. Cao and Y. Zhao (2007), “Mining for combined association rules on multiple datasets”, in Proc. DDDM, pp. 18–23.
  4. Longbing Cao (2012), “Combined Mining: Analyzing Object and Pattern Relations for Discovering Actionable Complex Patterns” sponsored by Australian Research Council Discovery Grants (DP1096218 and DP130102691) and an ARC Linkage Grant(LP100200774).
  5. Kavitha, K. And Ramaraj, E. (2012), “Mining Actionable Patterns using Combined Association Rules” International Journal of Current Research, Vol. 4, Issue, 03, pp.117-120, March, 2012.
  6. Jaturon Chattratichat, John Darlington, et al (1999), “An Architecture for Distributed Enterprise Data Mining”. Proceedings of the 7th International Conference on High Performance Computing and Networking.
  7. B. Park, D. Hershbereger, E. Johnson and H. Kargupta (1999), Collective data mining: A new perspective toward distributed data mining”. Accepted in the Advances in Distributed Data Mining, Eds: Hillol Kargupta and Philip Chan, AAAI/MIT Press (1999).
  8. G. Dong and J. Li (1999), “Efficient mining of emerging patterns: Discovering trends and differences” in Proc. KDD, pp. 43–52.
  9. H. Cheng, J. Han, J. Gao, K. Zhang, O. Verscheure, P. Yu, W. Fan and X. Yan (2008), “Direct mining of discriminative and essential graphical and item set features via model-based search tree” in Proc. KDD, pp. 230–238.
  10. B. Liu, W. Hsu and Y. Ma (1999), “Pruning and summarizing the discovered associations” in Proc. KDD, pp. 125–134.
  11. A. N. Swami, B. Lent and J. Widom (1997), “Clustering association rules” in Proc. ICDE, pp. 220– 231.
  12. J. Han, J. Yang, P. S. Yu and X. Yin (2006), “Efficient Classification across multiple database relations: A CrossMine approach” IEEE Trans. Know. Data Eng., vol. 18, no. 6, pp. 770–783.
  13. C. Zhang, H. Bohlscheid, H. Zhang, L. Cao and Y. Zhao (2008), “Combined pattern mining: From learned rules to actionable knowledge” in Proc. AI, pp. 393–403
  14. H. Yu, J. Han and J. Yang (2003), “Classifying large data sets using SVM with hierarchical clusters” in Proc. KDD, pp. 306–315.
  15. Frank, A. & Asuncion, A. (2010), “UCI Machine Learning Repository” [http://archive. ics.uci.edu/ml]. Irvine, CA: University of California, School of Information and Computer Science.
  16. David A. Bell, Jie Cheng and Weiru Liu (1997), “An Algorithm for Bayesian Belief Network Construction for Data,” In Proceedings of AI & STAT‘97, pp. 83-90.
  17. Dr. E. Kumar and A. Solanki (2010), “A Combined Mining Approach and Application in Tax Administration” International Journal of Engineering and Technology Vol.2(2), 2010, 38-44.
  18. C. Zhang, H. Bohlscheid, H. Zhang, L. Cao and Y. Zhao (2008), “Combined pattern mining: From learned rules to actionable knowledge” in Proc. AI, pp. 393–403.
  19. L. Cao, Y. Zhao, H. Zhang, D. Luo, and C. Zhang, “Flexible frameworks for actionable knowledge discovery” IEEE Trans. Know. Data Eng., Vol. 22, no. 9, pp.1299– 1312, Sep. 2010.
  20. M. Antonelli, P. Ducange, and F. Marcelloni, “Multi objective evolutionary rule and condition selection for designing fuzzy rule-based classifiers” in Proc. FUZZ-IEEE, Jun. 2012, pp. 1–7.
Index Terms

Computer Science
Information Sciences

Keywords

Combined mining approach Multi-objective Evolutionary algorithm Apriori algorithm Knowledge Discovery combined mining complex data data mining multiple source data mining.