# comparing an element in a column in a data frame with another element in the same column in another data frame for corresponding rows in R

I am new to programming and obviously new to R. I am learning some documents in R and started programming in R.

I have four data frames with data frame names `Data1`, `Data2`, `Data3`, `Data4`. Each data frames has eight columns (`V1`, `V2`, `V3`, `V4`, `V5`, `V6`, `V7`, `V8`) and 10,000 rows.The number of rows and number of columns is same for all the data frames.

I want to compare the elements of each row's 8th column (`V8`) of all the four data frame with each other with their corresponding rows and find the maximum and minimum value. For example if I have 10 rows and 8 columns in each data frame, I have to compare the 1st row 8th column element of `Data1`, `Data2`, `Data3`, `Data4` to find the maximum and minimum value. Then i have to compare the 2nd row 8th column element of `Data1`, `Data2`, `Data3`, `Data4` to find the maximum and minimum value. Similary the 3rd row 8th column element, 4th row 8th column element and i have to do this for remaining 10,000 rows. How should I do this and what function should I use?

-
Welcome to Stack Overflow! Please check this link. A good reproducible example will help others to tackle your question lot more easily. –  Chinmay Patil Oct 22 '13 at 12:30

## 3 Answers

Sample data:

``````Data1 <- as.data.frame(matrix(runif(80), 10, 8))
Data2 <- as.data.frame(matrix(runif(80), 10, 8))
Data3 <- as.data.frame(matrix(runif(80), 10, 8))
Data4 <- as.data.frame(matrix(runif(80), 10, 8))
``````

You can do:

``````pmin(Data1\$V8, Data2\$V8, Data3\$V8, Data4\$V8)
pmax(Data1\$V8, Data2\$V8, Data3\$V8, Data4\$V8)
``````

Or something more programmatic (there can be many variations here)

``````Datas <- mget(paste0("Data", 1:4))
do.call(pmin, lapply(Datas, `[[`, "V8"))
do.call(pmax, lapply(Datas, `[[`, "V8"))
``````
-

You could combine your columns in a new dataframe. Then its easy to find the row-wise min or max values:

``````newd <- data.frame(a=Data1\$V8, b=Data2\$V8, c=Data3\$V8, d=Data4\$V8)
apply(newd, 1, max)
``````
-

I know my answer is a very noob way of programming in R but It works

``````data1 <- data.frame(c(rnorm(100)), c(rnorm(100)),c(rnorm(100)),c(rnorm(100)),c(rnorm(100)),c(rnorm(100)), c(rnorm(100)),c(rnorm(100)))
data2 <- data.frame(c(rnorm(100)), c(rnorm(100)),c(rnorm(100)),c(rnorm(100)),c(rnorm(100)),c(rnorm(100)), c(rnorm(100)),c(rnorm(100)))
data3 <- data.frame(c(rnorm(100)), c(rnorm(100)),c(rnorm(100)),c(rnorm(100)),c(rnorm(100)),c(rnorm(100)), c(rnorm(100)),c(rnorm(100)))
data4 <- data.frame(c(rnorm(100)), c(rnorm(100)),c(rnorm(100)),c(rnorm(100)),c(rnorm(100)),c(rnorm(100)), c(rnorm(100)),c(rnorm(100)))

i = 1
mins <- NULL
maxs <- NULL
while (i <=length(data1[,1]))
{
mins[i] <- min(cbind(data1[,8][i],data2[,8][i],data3[,8][i],data4[,8][i]))
maxs[i] <- max(cbind(data1[,8][i],data2[,8][i],data3[,8][i],data4[,8][i]))
i = i + 1
}
mins
maxs
``````

First I have created the dataframes, then I simply wrapped in while loop.

-