An Empirical Investigation on Classical Clustering Methods
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Title |
An Empirical Investigation on Classical Clustering Methods
Not Available |
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Creator |
S.D. Wahi
Sukanta Dash A.R. Rao |
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Subject |
Cluster analysis
Rice Hierarchical methods Non-hierarchical method Distance measures |
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Description |
Not Available
Five classical clustering method s: four hierarchical-single linkage, average-between linkage, average-within linkage, Wards-and one non-hi era rchical-k-means-using five different distance measures: squared Euclidean, city block, Chebychev's, Pearson correlation and Minkowski have been compared on the basis of simu lated multivariate data on paddy crop genotypes. The performance of different clustering methods was compared based on the average percentage probability of misclassification an its standard error. The performance of different hierarchical clustering methods varied with distance measures used and it was found that squared Euclidean performed best among the five distances followed by city block distance in majority of cases. Among the five methods, the Ward's method performed best with least average percentage probability of misdassification followed by non-hierarchical k-means method irrespective of the sample size. Among the different distance measures used under hierarchical clustering methods, the squared Euclidean distance showed least average percentage probability of misclassification followed by city block distance. Not Available |
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Date |
2017-06-23T11:10:20Z
2017-06-23T11:10:20Z 2009-01-01 |
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Type |
Research Paper
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Identifier |
Not Available
Not Available http://krishi.icar.gov.in/jspui/handle/123456789/4460 |
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Language |
English
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Relation |
Not Available;
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Publisher |
The lcfai University Press
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