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for the following dental.csv file

item,x,y,z
A1,66,89,122
A2,14,44,-9
A3,-17,199,11
A35,99,0,12
test,15,144,15

i wrote the following R Script

mycoord<-read.csv("dental.csv")
d<-dist(mycoord)
h<-hclust(d)
plot(h, lab=mycoord$item)

this matches the "test" coordinates to the closest value as follows

enter image description here

what i need to do is a function that takes integer x,y,z and place them in the dataframe as "test", then plot the dendrogram. any help?

another thing, for the same R Script above i added the following

newdata<-mycoord[,2:4]
heatmap(as.matrix(newdata))

i get the following chart

enter image description here

for some reason, i cant add labels to the heatmap (i mean "A3", "A4", etc.. instead of "1","2","3", etc..) I get error when use the parameter lab=mycoord$item

share|improve this question
    
Sorry, don't quite follow. What are the labels you're looking for in the final dendrogram? –  Arun Feb 19 '13 at 8:02
    
a1, a2, a3 and a35 are standard coordinates as x,y,z. i need to put the test coordinate and the when the function runs i get the closest value to coordinates. in this example the "test" coordinates are nearest to "A3". i dont want to put the "test" coordinates in the CSV file i want them to be plotted "run-time" –  Mohamed Kamal Feb 19 '13 at 8:08

2 Answers 2

up vote 1 down vote accepted

How about loading your CSV without test first like this:

df <- read.csv(header=T, text="item,x,y,z
A1,66,89,122
A2,14,44,-9
A3,-17,199,11
A35,99,0,12")

Then load test as:

test <- data.frame(item="test", x=15, y=144, z=15)

Then, calculate distance by using rbind as:

d <- dist(rbind(df[,2:4], test[,2:4]))
h <- hclust(d)
plot(h, labels=c(as.character(df$item), as.character(test$item)))

Is this what you require?

For the second part:

dd <- rbind(df, test)
dd.m <- as.matrix(dd[,2:4])
row.names(dd.m) <- dd[,1]
heatmap(dd.m)

enter image description here

share|improve this answer
1  
thank you, my vote up. Would you please take a look at the second part of my question? (heatmap labels) –  Mohamed Kamal Feb 19 '13 at 8:21

Is it so, that you just want to have a function that takes your original data matrix and then a test matrix, combines it and feeds it then into your clustering? Somethink like

testClust <- function(data,test){
    mycoord <- rbind(data,test)
    d<-dist(mycoord)
    h<-hclust(d)
    plot(h, lab=mycoord$item)
}
share|improve this answer
1  
(+1) better than rbinding every time (if the OP wants to use many test cases. –  Arun Feb 19 '13 at 8:37
    
thanks a lot, Daniel and Arun –  Mohamed Kamal Feb 19 '13 at 9:56

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