3

I am trying to calculate the number of samples, mean, standard deviation, coefficient of variation, lower and upper 95% confidence limits, and quartiles of this data set across each column and put it into a new data frame.

The numbers below are not necessarily all correct & I didn't fill them all in, just provides an example. These values will be used to create a box plot, hence the need for the quartiles. Rows and columns would be headers in the end. See example below.

Here is the structure:

B1 <- c(8, 6, 13, 6, 27, 104, 18, 3)
B2 <- c(2, 13, 1, 64, 127, 24, 4, 3)
B3 <- c(8, 16, 113, 680, 227, 310, 138, 30)
B4 <- c(238, 46, 613, 69, 7, 14, 4, 8)

x <- data.frame(B1, B2, B3, B4)

> head(x)
    B1  B2  B3  B4
1    8   2   8 238
2    6  13  16  46
3   13   1 113 613
4    6  64 680  69
5   27 127 227   7
6  104  24 310  14

Desired output:

> y
                   B1    B2   B3    B4
n                  8     8     8    8 
mean               23   30    190   125
Stand dev          5    2     34     2
CoeffofVariation   0.3   0.4  0.7   1.3
LowerConfInterval  2    20    35    45
UpperConfInterval  50    120  122   120
LowerQuartile
Median
Upper Quantile
Inter Quartile Range
Minimum
Maximum 
Regression equation
  • 8
    Write a function that returns a named vector with each statistic of interest. Then use sapply to loop over the data.frame. myFunc <- function(x) c(mean=mean(x), n=length(x), median=median(x)) and then sapply(dat, myFunc). Wrap this in data.frame to get a data.frame rather than a matrix. – lmo Oct 2 '17 at 13:53
  • 6
    Related: dplyr - Multiple summary functions – Jaap Oct 2 '17 at 13:57
  • 2
    "...These values will be used to create a box plot" Then why not just use ggplot2's geom_boxplot? ggplot2.tidyverse.org/reference/geom_boxplot.html – r.bot Oct 2 '17 at 14:09
3

You could use something like this:

B1 <- c(8, 6, 13, 6, 27, 104, 18, 3)
B2 <- c(2, 13, 1, 64, 127, 24, 4, 3)
B3 <- c(8, 16, 113, 680, 227, 310, 138, 30)
B4 <- c(238, 46, 613, 69, 7, 14, 4, 8)

combDF <- data.frame(cbind(B1,B2,B3,B4))

data_long <- gather(combDF, factor_key=TRUE)

data_long%>% group_by(key)%>%
  summarise(mean= mean(value), sd= sd(value), max = max(value),min = min(value))

and the output would be:

    # A tibble: 4 x 5
     key    mean        sd   max   min
  <fctr>   <dbl>     <dbl> <dbl> <dbl>
1     B1  23.125  33.60458   104     3
2     B2  29.750  44.59260   127     1
3     B3 190.250 224.72253   680     8
4     B4 124.875 212.08653   613     4

You have not specified which confidence level you are looking but the code I posted can be adapted to your problem.

  • that tidyr package function gather is awesome! – kslayerr Oct 2 '17 at 14:45
3

As lmo mentioned, you could use sapply, like this:

sapply(x, function(x) c( "Stand dev" = sd(x), 
                         "Mean"= mean(x,na.rm=TRUE),
                         "n" = length(x),
                         "Median" = median(x),
                         "CoeffofVariation" = sd(x)/mean(x,na.rm=TRUE),
                         "Minimum" = min(x),
                         "Maximun" = max(x),
                         "Upper Quantile" = quantile(x,1),
                         "LowerQuartile" = quantile(x,0)
                    )
)

Output:

                            B1         B2         B3         B4
Stand dev            33.604581  44.592600 224.722527 212.086531
Mean                 23.125000  29.750000 190.250000 124.875000
n                     8.000000   8.000000   8.000000   8.000000
Median               10.500000   8.500000 125.500000  30.000000
CoeffofVariation      1.453171   1.498911   1.181196   1.698391
Minimum               3.000000   1.000000   8.000000   4.000000
Maximun             104.000000 127.000000 680.000000 613.000000
Upper Quantile.100% 104.000000 127.000000 680.000000 613.000000
LowerQuartile.0%      3.000000   1.000000   8.000000   4.000000

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.