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R:



sesejun@is.ocha.ac.jp
     2011/01/06
> usps.dist<-dist(usps.sub, method="euclidean")


> usps.dist
              img_0_00_00 img_1_00_00 img_2_00_00 img_3_00_00
img_1_00_00      2517.392
img_2_00_00      2172.201    2204.662
img_3_00_00      2073.739    2128.806    2225.389
img_4_00_00      2239.165    1915.576    2220.492    1928.101
img_5_00_00      1981.039    2472.299    2179.280    2400.684
...
> usps.hclust<-hclust(usps.dist,method="single")
> plot(usps.hclust)
> library(cluster)
> usps.div<-diana(usps.sub, metric="euclidian",stand=TRUE)


> print(usps.div)
Merge:
       [,1] [,2]
 [1,]    -8 -10
 [2,]    -2   -7
 [3,]    -4   -5
 [4,]     1   -9
...

> plot(usps.div)

                    <Return>            :
                    <Return>            :
1.                            DIANA
     usps_cluster_large.tab




     •   1,2



2.



•              1   26

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  • 2. > usps.dist<-dist(usps.sub, method="euclidean") > usps.dist img_0_00_00 img_1_00_00 img_2_00_00 img_3_00_00 img_1_00_00 2517.392 img_2_00_00 2172.201 2204.662 img_3_00_00 2073.739 2128.806 2225.389 img_4_00_00 2239.165 1915.576 2220.492 1928.101 img_5_00_00 1981.039 2472.299 2179.280 2400.684 ... > usps.hclust<-hclust(usps.dist,method="single") > plot(usps.hclust)
  • 3.
  • 4. > library(cluster) > usps.div<-diana(usps.sub, metric="euclidian",stand=TRUE) > print(usps.div) Merge: [,1] [,2] [1,] -8 -10 [2,] -2 -7 [3,] -4 -5 [4,] 1 -9 ... > plot(usps.div) <Return> : <Return> :
  • 5.
  • 6. 1. DIANA usps_cluster_large.tab • 1,2 2. • 1 26