# Distance matrix in R

I have to create a distance matrix using R. My data is in excel file which contains 300 rows and 10 columns. I have to create distance matrix based on the values of 9th column.For example

``````   s s s s s
s  1
s  2 2
s  3 3 4
s  4 4 7 3
s  5 5 8 2 8
``````

How to create this type of matrix?

-
Do you know how to get the data out of excel into R? You're really asking two questions here. –  Spacedman Aug 3 '11 at 8:37

Easiest option I know, is to save your Excel sheet containing the data as a CSV file. Make sure that only the first row and column of the sheet contain any sample or variable names.

``````dat <- read.csv("path/to/my/file.csv")
``````

and then use `dist()` on the 9th column to compute the dissimilarity matrix

``````dij <- dist(dat[, 9])
``````

If you want something other than the Euclidean distance, see the options in `?dist` and if those don't suit, try the `daisy()` function in recommended package cluster, or `vegdist()` function in package vegan or the proxy package.

-
@Simpson I tried your code .But I got the error like this.dij <- dist(myfile[, 9]) Error in myfile[, 9] : incorrect number of dimensions –  akash Aug 3 '11 at 9:06
@akash given that I haven't seen your data, I went with what you told me. If your data set doesn't have 9 columns (were you counting the sample names as a column?) find out why. You either read your data in wrong or your data doesn't have 9 columns/variables as far as R is concerned. –  Gavin Simpson Aug 3 '11 at 9:26
If your numbers are in a vector called z, then `dist(z)` returns a distance matrix of euclidean (`sqrt(dx^2+dy^2)`) values. See `help(dist)` for more info.