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I am working in R. I have a dataframe with multiple columns. For each row in the dataframe, I want to call a function on the row, and the input of the function is using multiple columns from that row. For example, let's say I have this data and this testFunc which accepts two args:

> df <- data.frame(x=c(1,2), y=c(3,4), z=c(5,6))
> df
  x y z
1 1 3 5
2 2 4 6
> testFunc <- function(a, b) a + b

Let's say I want to apply this testFunc to columns x and z. So, for row 1 I want 1+5, and for row 2 I want 2 + 6. Is there a way to do this without writing a for loop, maybe with the apply function family?

I tried this:

> df[,c('x','z')]
  x z
1 1 5
2 2 6
> lapply(df[,c('x','z')], testFunc)
Error in a + b : 'b' is missing

But got error. Any ideas? Thanks!

EDIT: the actual function I want to call is not a simple sum, but it is power.t.test. I used a+b just for example purposes. The end goal is to be able to do something like this (written in pseudocode):

df = data.frame(
    delta=c(delta_values), 
    power=c(power_values), 
    sig.level=c(sig.level_values)
)

lapply(df, power.t.test(delta_from_each_row_of_df, 
                        power_from_each_row_of_df, 
                        sig.level_from_each_row_of_df
))

where the result is a vector of outputs for power.t.test for each row of df.

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7 Answers 7

up vote 15 down vote accepted

You can apply apply to a subset of the original data.

 dat <- data.frame(x=c(1,2), y=c(3,4), z=c(5,6))
 apply(dat[,c('x','z')], 1, function(x) sum(x) )

or if your function is just sum use the vectorized version:

rowSums(dat[,c('x','z')])
[1] 6 8

If you want to use testFunc

 testFunc <- function(a, b) a + b
 apply(dat[,c('x','z')], 1, function(x) testFunc(x[1],x[2]))

EDIT To access columns by name and not index you can do something like this:

 testFunc <- function(a, b) a + b
 apply(dat[,c('x','z')], 1, function(y) testFunc(y['z'],y['x']))
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thanks @agstudy, that worked! do you know if there is any way to specify the args by name instead of by index? so, for testFunc, something like apply(dat[,c('x','z')], 1, [pseudocode] testFunc(a=x, b=y))? the reason is that I am calling power.t.test in this manner, and I would love to be able to reference the delta, power, sig.level params by name instead of sticking them into an array with pre-specified positions and then referencing those position, for the reason of being more robust. in any case thanks so much! –  vasek1 Feb 25 '13 at 2:37
    
sorry about previous comment, hit enter before finished typing :) deleted it and posted full version. –  vasek1 Feb 25 '13 at 2:38
1  
@vasek1 I update my comment. –  agstudy Feb 25 '13 at 2:43
1  
Don't use apply on big data.frames it will copy the entire object (to convert to a matrix). This will also cause problems If you have different class objects within the data.frame. –  mnel Feb 25 '13 at 2:47
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A data.frame is a list, so ...

For vectorized functions do.call is usually a good bet. But the names of arguments come into play. Here your testFunc is called with args x and y in place of a and b. The ... allows irrelevant args to be passed without causing an error:

do.call( function(x,z,...) testFunc(x,z), df )

For non-vectorized functions, mapply will work, but you need to match the ordering of the args or explicitly name them:

mapply(testFunc, df$x, df$z)

Sometimes apply will work - as when all args are of the same type so coercing the data.frame to a matrix does not cause problems by changing data types. Your example was of this sort.

If your function is to be called within another function into which the arguments are all passed, there is a much slicker method than these. Study the first lines of the body of lm() if you want to go that route.

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2  
+10 if I could. Welcome to SO. great answer - it might be worth mentioning Vectorize as a wrapper to mapply to vectorize functions –  mnel Feb 25 '13 at 2:50
    
wow, that is slick. The original function I used was not vectorized (a custom extension on top of power.t.test), but I think I will vectorize it and use do.call(...). Thanks! –  vasek1 Feb 25 '13 at 2:55
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Use mapply

> df <- data.frame(x=c(1,2), y=c(3,4), z=c(5,6))
> df
  x y z
1 1 3 5
2 2 4 6
> mapply(function(x,y) x+y, df$x, df$z)
[1] 6 8

> cbind(df,f = mapply(function(x,y) x+y, df$x, df$z) )
  x y z f
1 1 3 5 6
2 2 4 6 8
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Many functions are vectorization already, and so there is no need for any iterations (neither for loops or *pply functions). Your testFunc is one such example. You can simply call:

  testFunc(df[, "x"], df[, "z"])

In general, I would recommend trying such vectorization approaches first and see if they get you your intended results.


Alternatively, if you need to pass multiple arguments to a function which is not vectorized, mapply might be what you are looking for:

  mapply(power.t.test, df[, "x"], df[, "z"])
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oh, sweet. Do you know if there is a way to specify arguments by name in mapply? i.e. something like [pseudocode] mapply(power.t.test, delta=df[,'delta'], power=df[,'power'], ...) ? –  vasek1 Feb 25 '13 at 2:41
1  
Yep, it is exactly as you have it! ;) –  Ricardo Saporta Feb 25 '13 at 2:42
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Others have correctly pointed out that mapply is made for this purpose, but (for the sake of completeness) a conceptually simpler method is just to use a for loop.

for(row in 1:length(df$x)) { 
    df$newvar[row] <- testFunc(df$x[row], df$z[row]) 
}
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You're right. To use mapply effectively, I think you have to understand that it's just a "for" loop behind the scenes, especially if you come from a procedural programming background such as C++ or C#. –  Contango Mar 31 at 8:59
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@user20877984's answer is excellent. Since they summed it up far better than my previous answer, here is my (posibly still shoddy) attempt at an application of the concept:

Using do.call in a basic fashion:

powvalues <- list(power=0.9,delta=2)
do.call(power.t.test,powvalues)

Working on a full data set:

# get the example data
df <- data.frame(delta=c(1,1,2,2), power=c(.90,.85,.75,.45))

#> df
#  delta power
#1     1  0.90
#2     1  0.85
#3     2  0.75
#4     2  0.45

lapply the power.t.test function to each of the rows of specified values:

result <- lapply(
  split(df,1:nrow(df)),
  function(x) do.call(power.t.test,x)
)

> str(result)
List of 4
 $ 1:List of 8
  ..$ n          : num 22
  ..$ delta      : num 1
  ..$ sd         : num 1
  ..$ sig.level  : num 0.05
  ..$ power      : num 0.9
  ..$ alternative: chr "two.sided"
  ..$ note       : chr "n is number in *each* group"
  ..$ method     : chr "Two-sample t test power calculation"
  ..- attr(*, "class")= chr "power.htest"
 $ 2:List of 8
  ..$ n          : num 19
  ..$ delta      : num 1
  ..$ sd         : num 1
  ..$ sig.level  : num 0.05
  ..$ power      : num 0.85
... ...
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Haha convoluted perhaps? ;) why are you using t() and applying over 2, why not just apply over 1? –  Ricardo Saporta Feb 25 '13 at 2:44
1  
@RicardoSaporta - because I am an idiot -updated. –  thelatemail Feb 25 '13 at 2:47
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If data.frame columns are different types, apply() has a problem. A subtlety about row iteration is how apply(a.data.frame, 1, ...) does implicit type conversion to character types when columns are different types; eg. a factor and numeric column. Here's an example, using a factor in one column to modify a numeric column:

mean.height = list(BOY=69.5, GIRL=64.0)

subjects = data.frame(gender = factor(c("BOY", "GIRL", "GIRL", "BOY"))
         , height = c(71.0, 59.3, 62.1, 62.1))

apply(height, 1, function(x) x[2] - mean.height[[x[1]]])

The subtraction fails because the columns are converted to character types.

One fix is to back-convert the second column to a number:

apply(subjects, 1, function(x) as.numeric(x[2]) - mean.height[[x[1]]])

But the conversions can be avoided by keeping the columns separate and using mapply():

mapply(function(x,y) y - mean.height[[x]], subjects$gender, subjects$height)

mapply() is needed because [[ ]] does not accept a vector argument. So the column iteration could be done before the subtraction by passing a vector to [], by a bit more ugly code:

subjects$height - unlist(mean.height[subjects$gender])
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