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I have a distance function which looks like this

sed <- function(x, y){
x <- x / sum(x)
y <- y / sum(y)

x <- x[y > 0]
y <- y[y > 0]
y <- y[x > 0]
x <- x[x > 0]

xy <- x + y
a <- x / xy
b <- y / xy

w <- xy / 2
2 * prod(a^(a*w) * b^(b*w)) - 1


and I have some data that looks like this:

> head(x)
             x         y
[1,] 0.5836377 0.8120142
[2,] 0.4642154 0.8857223
[3,] 0.8707579 0.4917120
[4,] 0.4688734 0.8832654
[5,] 0.8105051 0.5857316
[6,] 0.6409956 0.7675446

Where each row is a point with x and y coordinates. So sed calculates the distance between rows.

I would like to plot a heatmap using my distance function but I get the following error, how can I fix this?

> heatmap(as.matrix(x), distfun=as.dist(sed))
Error in as.vector(x, mode) : 
  cannot coerce type 'closure' to vector of type 'any'
share|improve this question
I don't think you want to use as.dist on sed. It's expecting the function itself. –  joran Sep 12 '12 at 14:05
that gives a different error: Error in y/sum(y) : 'y' is missing –  Robert Sep 12 '12 at 14:08
Yeah, I was sort of expecting more things to go wrong. Note that the default value for distfun is dist, which accepts the entire matrix as an input and returns the entire distance matrix. Chances are, heatmap is expecting sed to behave similarly. –  joran Sep 12 '12 at 14:10
Are you sure, you want your function sed to generate a single value? –  Sven Hohenstein Sep 12 '12 at 14:16
yes, sed is a function over two vectors which gives the distance between them as a real –  Robert Sep 12 '12 at 14:18

1 Answer 1

up vote 2 down vote accepted

The distfun argument expects a function that will return an object that is of class "dist" as returned by dist(). Your function computes the distance between two vectors not the entire set of dissimilarities for each pair of observations. It doesn't return the right type of object and nor can it without all the scaffolding required to iterate over all pairs of rows in the input data.

Fear ye not though as help is at hand via the proxy package available on CRAN. This allows you to provide exactly the sort of function you have written and it provides all the scaffolding required to generate the dissimilarity matrix.

You need to register your function with proxy before you can use it in anger:

## create a new distance measure
mydist <- function(x,y) x * y

## create a new entry in the registry with two aliases
pr_DB$set_entry(FUN = mydist, names = c("mydist"))

Just replace mydist with your function name and you can give it whatever name you want when entering it into the proxy database. Continuing this example, you'd then use dist() to compute the dissimilarity matrix:

dist(X, method = "mydist")

To see if this will suit your needs


Then read ?dist and ?pr_DB.

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