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Hi i am new to r and I have to solve this question below

Compare the maximum and minimum values within each group (factor level) to their respective group means. What is the largest absolute difference between one of your values and its group mean? What are the chances of obtaining such a value, assuming the data are normally distributed and centered around the respective group mean with a standard deviation of 1?

The dataset and frame was generated by

  fact<-rep(c("E","F","G","H"),each=12)
  variable2=rnorm(48,10)*(rep(rpois(4,.2),each=12)/8+1)
  ds<-data.frame(fact,variable2)

Any help will be appreciated

This is what I have tried

library(“plyr”)
ddply(ds,~fact,summarise,maximum=max(variable2),min=min(variable2),mean=mean(variable2))
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In addition to what you have tried, what does not work? – Paul Hiemstra Jun 10 '13 at 9:13
    
Perhaps a silly question, but have you run library("plyr") yet? – Steph Locke Jun 10 '13 at 9:22
    
Steph thanks that has run the code was trying to use library("ggplot2"). Is there a syntax to use to answer the next bit of the question? What is the largest absolute difference between one of your values and its group mean? What are the chances of obtaining such a value, assuming the data are normally distributed and centered around the respective group mean with a standard deviation of 1? – Diin Jun 10 '13 at 9:25
    
@Diin great, you should now be able to post an update to get rid of the ddply error message. Once you've calculated the mean you should be able to join/merge the summary table against your original dataset to get the difference between the value and the mean. – Steph Locke Jun 10 '13 at 9:28
    
@StephLocke can you help me with the second bit? – Diin Jun 10 '13 at 9:31
up vote 1 down vote accepted

You were nearly there. The dnorm function will help you here

res <- ddply(ds, ~fact , 
                summarise , 
                maxi = max(variable2) - mean(variable2),
                mini = min(variable2) - mean(variable2) )

res$probmax <- dnorm( res$maxi )
res$probmin <- dnorm( res$mini )
#  fact      maxi      mini    probmax      probmin
#1    E 1.7736537 -1.622157 0.08275571 0.1070311818
#2    F 1.7733593 -2.269254 0.08279894 0.0303883803
#3    G 2.6621257 -3.708242 0.01153470 0.0004120085
#4    H 0.8461922 -1.749625 0.27888407 0.0863339664
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