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I have a data frame with three columns which look like this: Device,Bandwidth,Delay

A device can be a PC or a Router. For each one of them I collected measurements every 2 minutes, which amount to 30 lines per device per hour. My goal is to correlate the 30 metrics of Bandwidth for every PC with those (bandwidth or delay) of the Router and sort the device list by correlation score to identify the most likely offender.

I am new to R but suspect this should be relatively easy to do. I appreciate your help.

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cor(dataframe) & have a look at this Reference Card to help you start R. –  Tyler Rinker Mar 9 '12 at 4:34
From what I understand of the question, cor(dataframe) is not what they want (and this will produce a "'x' must be numeric" error anyway, due to the Device column). I think the OP wants to calculate cor( df$Bandwidth[df$Device==GROUP_NAME], df$Bandwidth[df$Device=Router) for each GROUP_NAME in df$Device that isn't Router. –  mathematical.coffee Mar 9 '12 at 4:43

1 Answer 1

You may need to transform the data, for instance with dcast, before computing the correlations.

# Sample data
n <- 20
k <- 5
devices <- data.frame(
  Time      = rep(1:n,k),  # Make sure there is a primary key
  Device    = rep(LETTERS[1:k], each=n),
  Bandwidth = rlnorm(k*n),
  Delay     = rlnorm(k*n)

# Compute the correlations. I assume that "A" is the router.
delays    <- dcast( devices, Time ~ Device, value.var="Delay"     )[,-1]
bandwidth <- dcast( devices, Time ~ Device, value.var="Bandwidth" )[,-1]
cor( delays,    delays$A    ) 
cor( bandwidth, bandwidth$A ) 
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