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International Journal of Innovation and Scientific Research
ISSN: 2351-8014
 
 
Tuesday 16 April 2024

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HIGH DIMENSIONAL KN-FAST CLUSTERING BASED INTELLIGENT DECISIVE SUPPORT SYSTEM FOR EFFICIENT DISEASE PREDICTION USING DATA MINING AND RULE SETS


Volume 25, Issue 1, June 2016, Pages 320–331

 HIGH DIMENSIONAL KN-FAST CLUSTERING BASED INTELLIGENT DECISIVE SUPPORT SYSTEM FOR EFFICIENT DISEASE PREDICTION USING DATA MINING AND RULE SETS

D. BANUMATHY1 and S. SELVARAJAN2

1 Assistant Professor / CSE, Paavai Engineering College, Namakkal, Tamilnadu, India
2 Principal, Muthayammal College of Engineering, Rasipuram, Tamilnadu, India

Original language: English

Copyright © 2016 ISSR Journals. This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.

Abstract


The methods of high-dimensional clustering have been applied for variety of problems and in case of decisive support systems, there are few approaches discussed earlier, but suffers with the problem of false indexing ratio with poor clustering accuracy and higher time complexity. To overcome the issue of poor clustering accuracy, a novel Kn Fast Clustering algorithm is discussed in this paper. The method generates rule sets using the data records from the data set. First the dimension N is identified and for each dimension the range values are identified. From identified fuzzy values, the method computes disease impact factor for each of the dimension or symptoms towards each disease class. Based on the impact factor and the data points, we generate rule sets that consist of a single rule for each of the disease class. The Kn Fast clustering algorithm uses the fuzzy rule sets generated and for each data point from the data set, the clustering algorithm computes KN dimensional similarity measure. Based on computed similarity measure, the data points are assigned a class, and the method reduces the false indexing, overlapping, and time complexity of clustering.

Author Keywords: High-Dimensional Clustering, Decisive Support System, Disease Prediction, Data Mining, Rule Sets.


How to Cite this Article


D. BANUMATHY and S. SELVARAJAN, “HIGH DIMENSIONAL KN-FAST CLUSTERING BASED INTELLIGENT DECISIVE SUPPORT SYSTEM FOR EFFICIENT DISEASE PREDICTION USING DATA MINING AND RULE SETS,” International Journal of Innovation and Scientific Research, vol. 25, no. 1, pp. 320–331, June 2016.