0

I have an excel spreadsheet with 3 columns. The first column is the id of a picture which groups the data together, and the 2nd and 3rd columns are the values I am trying to find a correlation coefficient for.

For example:

ID  Dat1 Dat2
130 4   4.3
130 7.5 5
130 6.6 6
180 5.6 
180 5   8.7
180 7.1 5

In that example, the data is grouped by the values in the 1st column and then they have separate data in the 2nd and 3rd columns. I'm not sure whether it would be easier to find the correlation coefficients for each grouping using excel or R.

I have tried the Data Analysis add-in in Excel but it won't work for 3 columns.

Thanks in advance!

The real data has hundreds of thousands of lines of data. This is just an example.

0

3 Answers 3

4

Solution using data.table

# install.packages("data.table")
library(data.table)
df <- data.table(df)
df[,cor(Dat1,Dat2),by="ID"]
6
  • So if I have, say, 4 groups of data in the 1st column will that give me 4 correlation coefficients? Apr 8, 2015 at 5:31
  • Yes, if there are no NAs. If there are missing values try df[,cor(Dat1,Dat2,use= "na.or.complete"),by="ID"] (@akrun solution).
    – pogibas
    Apr 8, 2015 at 5:38
  • by the way, what is df? Apr 8, 2015 at 7:09
  • data frame (your dataset).
    – pogibas
    Apr 8, 2015 at 7:11
  • thanks so much!! just one more question: when I get the coefficients, it goes from the 5th coefficient to the 697th coefficient with a --- in between. does it just skip the values in between since there's too much data? how do i get ALL of the data displayed? Apr 8, 2015 at 7:25
4

You could try

library(dplyr)
df1 %>% 
   group_by(ID) %>% 
   summarise(Cor= cor(Dat1, Dat2, use= "na.or.complete"))
#   ID        Cor
#1 130  0.6407453
#2 180 -1.0000000

data

df1 <- structure(list(ID = c(130L, 130L, 130L, 180L, 180L, 180L),
Dat1 = c(4, 
7.5, 6.6, 5.6, 5, 7.1), Dat2 = c(4.3, 5, 6, NA, 8.7, 5)), .Names = c("ID", 
"Dat1", "Dat2"), class = "data.frame", row.names = c(NA, -6L))
2

Two base R solutions, using @akrun's data:

with(df1, by(cbind(Dat1, Dat2), ID, cor, use = "complete"))
# INDICES: 130
#           Dat1      Dat2
# Dat1 1.0000000 0.6407453
# Dat2 0.6407453 1.0000000
# ----------------------------------------------------------------------------------------------------------------------- 
# INDICES: 180
#      Dat1 Dat2
# Dat1    1   -1
# Dat2   -1    1

lapply(split(df1, df1$ID), function(x) cor(x$Dat1, x$Dat2, use = "complete"))
# $`130`
# [1] 0.6407453
# 
# $`180`
# [1] -1
1
  • The first solution can be also sapply(with(df1, by(df1[-1], df1[1], cor, use = "complete")),'[',2)
    – akrun
    Apr 8, 2015 at 6:13

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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