4

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.

6

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 
  • 2
    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
3

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$Score)
[1] 200
> median(x$Score)
[1] 200
> var(x$Score)
[1] 10000
> mean(x$Score)
[1] 200
> sd(x$Score)
[1] 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))
[1] 237.5
> x <- read.csv("scores.txt")
> mean(rep(x$Score, x$Frequency))
[1] 237.5
> median(rep(x$Score, x$Frequency))
[1] 250
> var(rep(x$Score, x$Frequency))
[1] 4905.063
> mean(rep(x$Score, x$Frequency))
[1] 237.5
> sd(rep(x$Score, x$Frequency))
[1] 70.03616
0
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]))

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.