4

I can summarise my data and calculate mean and sd values using:

summary <- aspen %>% group_by(year,Spp,CO2) %>% summarise_each(funs(mean,sd))

However, I cannot manage to calculate standard error as well. I tried this with no success:

summary <- aspen %>% group_by(year,Spp,CO2) %>% summarise_each(funs(mean,sd,se=sd/sqrt(n())))
  • You need to define a function to calculate the standard error, then to call it inside funs. – user3710546 Apr 23 '15 at 11:19
2

You can use std.error function from plotrix package or define your own function first and pass that function name as argument.

    library(plotrix)
    summary <- aspen %>% group_by(year,Spp,CO2) %>% 
summarise_each(funs(mean,sd,std.error)))
15

You could do

library(dplyr)
aspen %>% 
    group_by(year,Spp,CO2) %>%
    summarise_each(funs(mean,sd,se=sd(.)/sqrt(n())))

For reproducibility,

data(mtcars)
grpMt <- mtcars %>%
          group_by(gear, carb)

grpMt %>%
     summarise_each(funs(mean, sd, se=sd(.)/sqrt(n())), hp:drat) %>% 
     slice(1:2)
#   gear carb hp_mean drat_mean     hp_sd   drat_sd     hp_se    drat_se
#1    3    1   104.0    3.1800  6.557439 0.4779121  3.785939 0.27592269
#2    3    2   162.5    3.0350 14.433757 0.1862794  7.216878 0.09313968
#3    4    1    72.5    4.0575 13.674794 0.1532699  6.837397 0.07663496
#4    4    2    79.5    4.1625 26.913441 0.5397144 13.456721 0.26985722
#5    5    2   102.0    4.1000 15.556349 0.4666905 11.000000 0.33000000
#6    5    4   264.0    4.2200        NA        NA        NA         NA

which is the same you get with std.error from plotrix

 library(plotrix)
 grpMt %>% 
    summarise_each(funs(mean, sd, se=std.error), hp:drat) %>% 
    slice(1:2)
 #  gear carb hp_mean drat_mean     hp_sd   drat_sd     hp_se    drat_se
 #1    3    1   104.0    3.1800  6.557439 0.4779121  3.785939 0.27592269
 #2    3    2   162.5    3.0350 14.433757 0.1862794  7.216878 0.09313968
 #3    4    1    72.5    4.0575 13.674794 0.1532699  6.837397 0.07663496
 #4    4    2    79.5    4.1625 26.913441 0.5397144 13.456721 0.26985722
 #5    5    2   102.0    4.1000 15.556349 0.4666905 11.000000 0.33000000
 #6    5    4   264.0    4.2200        NA        NA        NA         NA
  • 1
    Very nice! But there is a problem if missing values occur. I therefore recommend to use summarise_each(funs(mean(., na.rm=T), n = sum(!is.na(.)), se = sd(., na.rm=T)/sqrt(sum(!is.na(.)))), hp:drat). Please note that the function n() gets this wrong for calculating the correct standard error (and will result in alpha error inflation) so instead sum(!is.na(.)) should be used. If you want to check for your own data, just include the terms n1=n(), n2 = sum(!is.na(.)). – Mario Reutter Aug 23 '17 at 15:07
  • @MarioReutter Yes, that is true, with NA values you need to use na.rm = TRUE. I think the OP didn't specify any NA elements so, I didn't made any correction. Also, I was modifying the OP's code – akrun Aug 23 '17 at 15:11
  • Of course. It wasn't meant as criticism but to complement your post. But please be aware that na.rm = TRUE is NOT sufficient because the n() function includes missing values resulting in standard errors being too low. I will add a small post to illustrate this. – Mario Reutter Aug 23 '17 at 15:16
  • @MarioReutter I didn't take it as a criticism. Yes, I do understand that it will fail in those conditions you described. I would have done the same thing if the OP mentioned about the missing values – akrun Aug 23 '17 at 15:17
2

Important add-on to @akrun:

If missing values (NA) can occur, you should use:

summarise_each(funs(mean(., na.rm=T), n = sum(!is.na(.)), se = sd(., na.rm=T)/sqrt(sum(!is.na(.)))), hp:drat)

Unfortunately, the n() function doesn't remove missing values so in addition to use na.rm=T, we need to replace n() by sum(!is.na(.)).

Illustration on how it can ge wrong with some of my own data:

summarise_each(funs( mean(., na.rm=T), n1=n(), n2=sum(!is.na(.)), se1=sd(., na.rm=T)/sqrt(n()), se2=sd(., na.rm=T)/sqrt(sum(!is.na(.)))), rating)

dplyr n() includes NAs

n2 and se2 are the correct values.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.