Sign Up

Sign Up to our social questions and Answers Engine to ask questions, answer people’s questions, and connect with other people.

Have an account? Sign In

Have an account? Sign In Now

Sign In

Login to our social questions & Answers Engine to ask questions answer people’s questions & connect with other people.

Sign Up Here

Forgot Password?

Don't have account, Sign Up Here

Forgot Password

Lost your password? Please enter your email address. You will receive a link and will create a new password via email.

Have an account? Sign In Now

You must login to ask a question.

Forgot Password?

Need An Account, Sign Up Here

Please briefly explain why you feel this question should be reported.

Please briefly explain why you feel this answer should be reported.

Please briefly explain why you feel this user should be reported.

Sign InSign Up

The Archive Base

The Archive Base Logo The Archive Base Logo

The Archive Base Navigation

  • SEARCH
  • Home
  • About Us
  • Blog
  • Contact Us
Search
Ask A Question

Mobile menu

Close
Ask a Question
  • Home
  • Add group
  • Groups page
  • Feed
  • User Profile
  • Communities
  • Questions
    • New Questions
    • Trending Questions
    • Must read Questions
    • Hot Questions
  • Polls
  • Tags
  • Badges
  • Buy Points
  • Users
  • Help
  • Buy Theme
  • SEARCH
Home/ Questions/Q 7951049
In Process

The Archive Base Latest Questions

Editorial Team
  • 0
Editorial Team
Asked: June 4, 20262026-06-04T02:26:41+00:00 2026-06-04T02:26:41+00:00

How can I use apply or a related function to create a new data

  • 0

How can I use apply or a related function to create a new data frame that contains the results of the row averages of each pair of columns in a very large data frame?

I have an instrument that outputs n replicate measurements on a large number of samples, where each single measurement is a vector (all measurements are the same length vectors). I’d like to calculate the average (and other stats) on all replicate measurements of each sample. This means I need to group n consecutive columns together and do row-wise calculations.

For a simple example, with three replicate measurements on two samples, how can I end up with a data frame that has two columns (one per sample), one that is the average each row of the replicates in dat$a, dat$b and dat$c and one that is the average of each row for dat$d, dat$e and dat$f.

Here’s some example data

dat <- data.frame( a = rnorm(16), b = rnorm(16), c = rnorm(16), d = rnorm(16), e = rnorm(16), f = rnorm(16))

            a          b            c          d           e          f
1  -0.9089594 -0.8144765  0.872691548  0.4051094 -0.09705234 -1.5100709
2   0.7993102  0.3243804  0.394560355  0.6646588  0.91033497  2.2504104
3   0.2963102 -0.2911078 -0.243723116  1.0661698 -0.89747522 -0.8455833
4  -0.4311512 -0.5997466 -0.545381175  0.3495578  0.38359390  0.4999425
5  -0.4955802  1.8949285 -0.266580411  1.2773987 -0.79373386 -1.8664651
6   1.0957793 -0.3326867 -1.116623982 -0.8584253  0.83704172  1.8368212
7  -0.2529444  0.5792413 -0.001950741  0.2661068  1.17515099  0.4875377
8   1.2560402  0.1354533  1.440160168 -2.1295397  2.05025701  1.0377283
9   0.8123061  0.4453768  1.598246016  0.7146553 -1.09476532  0.0600665
10  0.1084029 -0.4934862 -0.584671816 -0.8096653  1.54466019 -1.8117459
11 -0.8152812  0.9494620  0.100909570  1.5944528  1.56724269  0.6839954
12  0.3130357  2.6245864  1.750448404 -0.7494403  1.06055267  1.0358267
13  1.1976817 -1.2110708  0.719397607 -0.2690107  0.83364274 -0.6895936
14 -2.1860098 -0.8488031 -0.302743475 -0.7348443  0.34302096 -0.8024803
15  0.2361756  0.6773727  1.279737692  0.8742478 -0.03064782 -0.4874172
16 -1.5634527 -0.8276335  0.753090683  2.0394865  0.79006103  0.5704210

I’m after something like this

            X1          X2
1  -0.28358147 -0.40067128
2   0.50608365  1.27513471
3  -0.07950691 -0.22562957
4  -0.52542633  0.41103139
5   0.37758930 -0.46093340
6  -0.11784382  0.60514586
7   0.10811540  0.64293184
8   0.94388455  0.31948189
9   0.95197629 -0.10668118
10 -0.32325169 -0.35891702
11  0.07836345  1.28189698
12  1.56269017  0.44897971
13  0.23533617 -0.04165384
14 -1.11251880 -0.39810121
15  0.73109533  0.11872758
16 -0.54599850  1.13332286

which I did with this, but is obviously no good for my much larger data frame…

data.frame(cbind(
apply(cbind(dat$a, dat$b, dat$c), 1, mean),
apply(cbind(dat$d, dat$e, dat$f), 1, mean)
))

I’ve tried apply and loops and can’t quite get it together. My actual data has some hundreds of columns.

  • 1 1 Answer
  • 0 Views
  • 0 Followers
  • 0
Share
  • Facebook
  • Report

Leave an answer
Cancel reply

You must login to add an answer.

Forgot Password?

Need An Account, Sign Up Here

1 Answer

  • Voted
  • Oldest
  • Recent
  • Random
  1. Editorial Team
    Editorial Team
    2026-06-04T02:26:43+00:00Added an answer on June 4, 2026 at 2:26 am

    This may be more generalizable to your situation in that you pass a list of indices. If speed is an issue (large data frame) I’d opt for lapply with do.call rather than sapply:

    x <- list(1:3, 4:6)
    do.call(cbind, lapply(x, function(i) rowMeans(dat[, i])))
    

    Works if you just have col names too:

    x <- list(c('a','b','c'), c('d', 'e', 'f'))
    do.call(cbind, lapply(x, function(i) rowMeans(dat[, i])))
    

    EDIT

    Just happened to think maybe you want to automate this to do every three columns. I know there’s a better way but here it is on a 100 column data set:

    dat <- data.frame(matrix(rnorm(16*100), ncol=100))
    
    n <- 1:ncol(dat)
    ind <- matrix(c(n, rep(NA, 3 - ncol(dat)%%3)), byrow=TRUE, ncol=3)
    ind <- data.frame(t(na.omit(ind)))
    do.call(cbind, lapply(ind, function(i) rowMeans(dat[, i])))
    

    EDIT 2
    Still not happy with the indexing. I think there’s a better/faster way to pass the indexes. here’s a second though not satisfying method:

    n <- 1:ncol(dat)
    ind <- data.frame(matrix(c(n, rep(NA, 3 - ncol(dat)%%3)), byrow=F, nrow=3))
    nonna <- sapply(ind, function(x) all(!is.na(x)))
    ind <- ind[, nonna]
    
    do.call(cbind, lapply(ind, function(i)rowMeans(dat[, i])))
    
    • 0
    • Reply
    • Share
      Share
      • Share on Facebook
      • Share on Twitter
      • Share on LinkedIn
      • Share on WhatsApp
      • Report

Sidebar

Related Questions

I'm importing ~18,000 records of various entities that are related to each other from
In T-SQL you can use CROSS APPLY to get all possible variations between the
Can I use Apple's open source Core Foundation (CF classes) in a commercial product
I wish to have a slider similar to they use. http://www.koovs.com/apple-ipod Can anyone suggest
I can use FireFox and FireBug, in a pane, I can open a .css
I can use the PRINT statement in a stored procedure to debug my code.
I can use stat() to figure out what permissions the owner, group, or others
We can use solr range query like: http://localhost:8983/solr/select?q=queryStr&fq=x:[10 TO 100] AND y:[20 TO 300]
You can use the Filter property of a BindingSource to do SQL like filtering.
I can use ipcs(1) to list out the active shared memory objects on a

Explore

  • Home
  • Add group
  • Groups page
  • Communities
  • Questions
    • New Questions
    • Trending Questions
    • Must read Questions
    • Hot Questions
  • Polls
  • Tags
  • Badges
  • Users
  • Help
  • SEARCH

Footer

© 2021 The Archive Base. All Rights Reserved
With Love by The Archive Base

Insert/edit link

Enter the destination URL

Or link to existing content

    No search term specified. Showing recent items. Search or use up and down arrow keys to select an item.