# R computing mean, median, variance from file with frequency distribution

I am very new to R tool and my questions might be a little too obvious.

I have a file that has the following data:

``````Score     Frequency

100         10

200         30

300         40
``````

How do I read this file and compute the mean, median, variance and standard deviation?

If this above table was just raw scores without any frequency information, then I can do this:

x <- scan(file="scores.txt", what = integer())

median(x)

and so on, but I am not able to understand how to do these computations when given a frequency table.

## 3 Answers

Read the data with `read.table` (read `?read.table` for reading from a file). Then, expand the data by creating a vector of individual scores. We can then write a function to get the desired statistics. You can, of course, calculate each individually if you don't wish to write a function.

``````d <- read.table(header = TRUE, text = "Score     Frequency
100         10
200         30
300         40")

d2 <- rep(d\$Score, d\$Frequency)  ## expands the data by frequency of score

multi.fun <- function(x) {
c(mean = mean(x), median = median(x), var = var(x), sd = sd(x))
}

multi.fun(d2)
#      mean     median        var         sd
# 237.50000  250.00000 4905.06329   70.03616
``````
• What is the solution if frequencies are huge, e.g. you cannot expand the data in the memory? – meolic Mar 28 '18 at 18:15

Depending on what format you input file is in you can use `read.csv("scores.txt")`. You can change the separator with `read.csv("scores.txt", sep="\t")`. If you data doesn't have a header, you can use the option `header=F`.

I am going to use a `,` since it is easier to read here.

INPUT FILE

``````Score,Frequency
100,10
200,30
300,40
``````

R Source Code

``````x <- read.csv("scores.txt")
mean(x\$Score)
median(x\$Score)
var(x\$Score)
mean(x\$Score)
sd(x\$Score)
``````

R Output

``````> mean(x\$Score)
 200
> median(x\$Score)
 200
> var(x\$Score)
 10000
> mean(x\$Score)
 200
> sd(x\$Score)
 100
``````

If you want to include the frequency.

R Source Code

``````x <- read.csv("scores.txt")
mean(rep(x\$Score, x\$Frequency))
median(rep(x\$Score, x\$Frequency))
var(rep(x\$Score, x\$Frequency))
mean(rep(x\$Score, x\$Frequency))
sd(rep(x\$Score, x\$Frequency))
``````

R Output

``````> mean(rep(x\$Score, x\$Frequency))
 237.5
> x <- read.csv("scores.txt")
> mean(rep(x\$Score, x\$Frequency))
 237.5
> median(rep(x\$Score, x\$Frequency))
 250
> var(rep(x\$Score, x\$Frequency))
 4905.063
> mean(rep(x\$Score, x\$Frequency))
 237.5
> sd(rep(x\$Score, x\$Frequency))
 70.03616
``````
``````lines <- readLines("scores.txt")[-1]
mat <- matrix(as.numeric(unlist(
strsplit(gsub(".*(\\d+).*(\\d+).*", "\\1,\\2", lines), ","))),
ncol = 2, byrow = TRUE)
print(summary(mat[, 1]))
print(summary(mat[, 2]))
``````