This question is a follow up to a previous question: min value(greater than 0) from column combined with row operation

Essentially, I need to use the value from a differant matrix (same row/column) to pass in as parameter in the anonomous function of apply.

My code is

```
apply(dv, 2, function(y) { y[y>0] <- (y[y>0] -
blacksch(min(
ifelse(any(y>0), y[y>0], 0)),k,sigma,r,
(min(ifelse(any(y>0), (which(y>0)/steps) *t ,0))))
);
y })
```

the ```
min(
ifelse(any(y>0), y[y>0], 0))
```

needs to be from a different matrix `st`

but in the exact same location (row/column wise) as the value in dv.

As an example I could have the following two matrices dv and st:

```
> dv
[,1] [,2] [,3]
[1,] 0 0 0
[2,] 0 0 3
[3,] 0 3 5
> st
[,1] [,2] [,3]
[1,] 100 100.00 100.00
[2,] 100 100.00 102.95
[3,] 100 102.34 104.88
```

I would need to pass in the value 102.34 for column 2 to the first parameter of the function `blacksch`

(since this corresponds to the same position as the smallest value greater than 0 in column 2 of the matrix `dv`

so I know this not correct but something like:

```
apply(dv, 2, function(y) { y[y>0] <- (y[y>0] -
blacksch(st[minimum position of value greater than 0 in dv for each column],k,sigma,r,
(min(ifelse(any(y>0), (which(y>0)/steps) *t ,0))))
);
y })
```

I guess I should also mention that I need not only the minimum value from `st`

, but also the 'current' value(if I were to write this in a loop, I would do something similar to nested for loops)

My solution is not really the R way (and thus suffers from horrible performance):

```
for(j in 1:paths)
{
minrow=0
for(i in 1:steps)
{
if (dv[i,j]>0 && minrow==0)
{
minrow=i
bsminrow=blacksch(st[i,j],k,sigma,r, i/steps * t)
}
else if (minrow!=0)
{
dv[i,j]=blacksch(st[i,j],k,sigma,r,i/steps* t ) - bsminrow
}
}
}
```