I am trying to create a new dataframe that is a condensed version of a series of vectors.

while my data is built something like

mat <- matrix(1:18, 6) 
g <- c("a", "a", "b", "b", "c", "c")
df <- cbind(g, mat)

I would like to achieve

result_df like

a 1.5 7.5 13.5
b 3.5 9.5 15.5
c 5.5 11.5 17.5

I am running into trouble when I try the for loop, is there a way lapply() or apply() can do this natively? is there a simpler solution?

  • You may want to begin with a data frame instead of a matrix. – Rich Scriven Oct 31 '16 at 18:12
  • awesome. my data is in a dataframe, I will try this.. thank you @Zhenyuan Li – c0ba1t Oct 31 '16 at 18:14
  • @ZiaRanks - Well your example isn't – Rich Scriven Oct 31 '16 at 18:15
  • yeah... had to be there... you could look at edits and see this but no worries. I think we got it. Thank you anyway. – c0ba1t Oct 31 '16 at 18:15
up vote 2 down vote accepted

Another option, that might be more flexible for future needs, is to use dplyr. This requires the data to be in a data.frame, but it sounds like that is what you have anyway.

df <- data.frame(g, mat)

df %>%
  group_by(g) %>%
  summarise_all(mean)

It groups by the g column, then takes a mean of all of the remaining columns. It returns:

      g    X1    X2    X3
1     a   1.5   7.5  13.5
2     b   3.5   9.5  15.5
3     c   5.5  11.5  17.5

Which I believe is your desired outcome. If combined with tidyr, it may also make it easier to use/access those means by putting them in a long format

df %>%
  gather(Measurement, Value, -g) %>%
  group_by(g, Measurement) %>%
  summarise(mean = mean(Value))

returning:

      g Measurement  mean
1     a          X1   1.5
2     a          X2   7.5
3     a          X3  13.5
4     b          X1   3.5
5     b          X2   9.5
6     b          X3  15.5
7     c          X1   5.5
8     c          X2  11.5
9     c          X3  17.5
  • there are 2151 values so it gets really long but these are very good solutions. Thank you @MarkPeterson – c0ba1t Oct 31 '16 at 19:03
  • In this case, "really long" may actually make things easier. With that many values, you likely aren't looking at it directly often anyway. Many plotting approaches, particularly ggplot2, work more easily with long data. Similarly, it can make it easier to grab similar measurement types, particularly if the names of the values are similar to each other. – Mark Peterson Oct 31 '16 at 19:05
  • That is what I keep reading. I am still learning the melt and cast stuff though... – c0ba1t Oct 31 '16 at 19:12
  • I hear you @ZiaRanks It took me a while, but I came around to long data for a large range of things. It isn't always appropriate, but when it is: wow can it make a difference. If you are just exploring, I would recommend the tidyr vignette. It is a bit different syntax to get used to then from reshape2, but it fits really nicely with a lot of the other tidyverse packages and has some advantages (at least for me). – Mark Peterson Oct 31 '16 at 19:15

I have two options, depending on whether you want to first do row operation first or column operation.

The column-first option will loop through all columns using lapply, then uses tapply to find mean by group for each column.

as.data.frame(lapply(dat, tapply, INDEX = g, mean))

The row-first option will split the data frame by rows into several groups, then uses sapply to find column mean for each sub data frame.

## implicit splitting
do.call(rbind, by(dat, g, sapply, mean))

## explicit splitting
do.call(rbind, lapply(split(dat, g), sapply, mean))

If you have a matrix mat rather than a data frame, we can similarly do

apply(mat, 2L, tapply, INDEX = g, mean)

and

do.call(rbind, by(mat, g, colMeans))

test data

dat <- data.frame(V1 = 1:6, V2 = 7:12, V3 = 13:18)

mat <- matrix(1:18, 6)

g <- gl(3, 2, labels = letters[1:3])
  • Great solution.. for my purposes the answer provided by @MarkPeterson is more relevant but they both work. – c0ba1t Oct 31 '16 at 19:20

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