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Issue:Generalized net of the process of association rules discovery by Eclat algorithm using weather databases

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Title of paper: Generalized net of the process of association rules discovery by Eclat algorithm using weather databases
Author(s):
Veselina Bureva
"Prof. Asen Zlatarov" University, 1 “Prof. Yakimov” Blvd, Burgas–8010, Bulgaria
vesito_ka@abv.bg
Evdokia Sotirova
Prof. Asen Zlatarov” University, 1 “Prof. Yakimov” Blvd, Burgas–8010, Bulgaria
esotirova@btu.bg
Presented at: 14th IWGN, Burgas, 29-30 November 2013
Published in: Conference proceedings, pages 1—10
Download:  PDF (158  Kb, Info)
Abstract: In the present paper, a Generated net model is constructed to determine the possibility of forest fire by association rules. To model the process, we use frequent pattern mining by the Eclat algorithm. A pattern is considered to be frequent when it occurs in the data more often than a predefined minimum support frequency. Frequent pattern mining is a step of the process of association rules discovery. Eclat algorithm uses vertical data format for generating frequent patterns, with associative rules having the If A then B form. The proposed Generated net model should both fit well the input metrological observations, and correctly predict previously unknown weather parameters. It can be used for monitoring of the possibility of fire via frequent pattern mining depending on metrological conditions.
Keywords: Generalized Net, Association rules, Weather databases, Frequent pattern mining, Data Mining, Knowledge Discovery.
AMS Classification: 68Q85, 62H30.
References:
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  4. Bureva, V. Methods for extracting patterns from databases, Management and Education, University "Prof. Asen Zlatarov", Burgas, Vol. 8 (4), 2012, 255–258 (in Bulgarian).
  5. Bureva, V. Algorithms for associative rule mining, Management and Education, University "Prof. Asen Zlatarov", Burgas, Vol. 9 (6) 2013, 121–128 (in Bulgarian).
  6. Bureva, V. Generalized model of the process of the creating the association rules using Apriori algorithm, Annual of “Informatics” Section Union of Scientists in Bulgaria, Vo. 5, 2012, 73–83 (in Bulgarian).
  7. Bureva, V. Generalized model of the process of the creating the association rules using Frequent Pattern-Growth Method, Annual of “Informatics” Section Union of Scientists in Bulgaria, 2013 (in bulgarian, in press).
  8. Ghosh, S., Nag, A., Biswas, D., Singh, J.P., Biswas, S., Sarkar, D., Sarkar, P.P., Weather Data Mining using Artificial Neural Network, Recent Advances in Intelligent Computational Systems (RAICS), IEEE, 2011, 192–195.
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  10. Larose, D., Discovering Knowledge In Data. An Introduction To Data Mining, John Wiley& Sons, 2005.
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  12. Kalyankar, M., S. Alaspurkar, Data Mining Technique to Analyse the Metrological Data, International Journal of Advanced Research in Computer Science and Software Engineering, Volume 3, Issue 2, February 2013, 114–118. http://www.ijarcsse.com
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