I'm trying using the corr() function to calculate weighted ponderations. The way it works is the first argument should be a matrix with two columns corresponding to the two variables whose correlation we wish to calculate and the second a vector of weights to be applied to each pair of observations.

Here is an example.

```
> head(d)
Shade_tolerance htot
1 4.56 25.0
2 2.73 23.5
3 2.73 21.5
4 3.97 17.0
5 4.00 25.5
6 4.00 23.5
> head(poids)
[1] 5.200440e-07 5.200440e-07 1.445016e-06 1.445016e-06 1.445016e-06 1.445016e-06
> corr(d,poids)
[1] 0.1357279
```

So I got it and I'm able to use it on my matrix but I would like to compute different correlations according to the levels of a factor. Let's say as if I was using the tapply() function.

```
> head(d2)
Shade_tolerance htot idp
1 4.56 25.0 19
2 2.73 23.5 19
3 2.73 21.5 19
4 3.97 17.0 18
5 4.00 25.5 18
6 4.00 23.5 18
```

So my dream would be to do something like this:

```
tapply(as.matrix(d2[,c(1,2)]), d2$idp, corr)
```

Except that as you know in tapply() the first element needs to be avector not a matrix.

Would someone have any solution for me?

Thanks a lot for your help.

EDIT: I just realized that I am missing the weights for the weighted correlation in the part of the data frame I showed you. So it would have some how to take both the matrix and the weights according to the levels of the factor.

```
> head(df)
Shade_tolerance htot idp poids
1 4.56 25.0 19 5.200440e-07
2 2.73 23.5 19 5.200440e-07
3 2.73 21.5 19 1.445016e-06
4 3.97 17.0 19 1.445016e-06
5 4.00 25.5 19 1.445016e-06
6 4.00 23.5 19 1.445016e-06
```

I hope it is clear.