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| Mining Spatial Gene Expression Data Using Association Rules
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Full
text: |
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Source |
International Journal of Computer Science and Security (IJCSS) |
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Table of Contents |
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Download
Complete Issue PDF(3.22MB) |
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Volume: 3 Issue: 5 |
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Pages: 334-447 |
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Publication
Date: November 2009 |
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ISSN
(Online): 1985-1553 |
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Pages |
351 - 357 |
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Author(s) |
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Published
Date |
26-12-2009 |
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Publisher |
CSC
Journals, Kuala Lumpur,
Malaysia |
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ADDITIONAL
INFORMATION |
| Keywords Abstract References Cited by Related Articles Collaborative
Colleague |
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KEYWORDS: Association Rule, Spatial Gene expression data, Similarity Matrix, Boolean vector |
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| One of the important problems in data mining is discovering association rules from spatial gene expression data where each transaction consists of a set of genes and probe patterns. The most time consuming operation in this association rule discovery process is the computation of the frequency of the occurrences of interesting subset of genes (called candidates) in the database of spatial gene expression data. A fast algorithm has been proposed for generating frequent itemsets without generating candidate itemsets along with strong association rules. The proposed algorithm uses Boolean vector with relational AND operation to discover frequent itemsets. Experimental results shows that combining Boolean Vector and relational AND operation results in quickly discovering of frequent itemsets and association rules as compared to general Apriori algorithm . |
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M. Anandhavalli, M. K. Ghose, K. Gauthaman and M. Boosha, “Global Search Analysis of Spatial Gene Expression Data Using Genetic Algorithm”, Computer Science Recent Trends in Network Security and Applications Communications in Computer and Information Science, 89(3), pp. 593-602, 2010. |
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O. J. Oyelade and O. O. Oyejoke , “Knowledge Discovery from Students’ Result Repository: Association Rule Mining Approach”, International Journal of Computer Science and Security (IJCSS), 4(2), pp. 199 – 207, 2010. |
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S. M. Elayidom , S. M. Idikkula and J. Alexander, “Applying statistical dependency analysis techniques In a Data mining Domain”, International Journal of Data Engineering (IJDE), 1(2), pp. 14 – 24, 2010. |
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E. Chandra and K. Nandhini, “Knowledge Mining from Student Data”, European Journal of Scientific Research, 47(1), pp.156-163, 2010. |
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Academia.edu |
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4shared |
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| M.Anandhavalli : Colleagues
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| M.K.Ghose : Colleagues
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| K.Gauthaman : Colleagues
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